Wireless location using signal fingerprinting and other location estimators

ABSTRACT

A wireless location system is disclosed. Locations of mobile stations (MS) may be determined using one or more MS locating technologies based on, e.g.: computed offsets from terrestrial base stations; satellite transmissions; indoor antennas; low range base stations; and in particular, signal pattern recognition for associating wireless signal characteristics with distinct geographic locations. The system can: adapt and/or calibrate its performance with environmental and geographical changes; capture location signal data for enhancement of a self-maintaining database of predictive location signal data; evaluate MS locations using heuristics and constraints related to terrain, MS velocity and path extrapolation; and adjust MS locations adaptively and/or statistically for providing more reliable and accurate locations. The system can be configured for environments ranging from dense urban, urban, suburban, rural, mountain to low traffic or isolated roadways. The system is useful for 911 emergencies, tracking, routing (e.g., to desired products/services), people and animal location including applications for confinement to and exclusion from certain areas.

RELATED APPLICATIONS

The present application is a continuation of U.S. application Ser. No. 09/194,367 filed Nov. 24, 1998 which is the National Stage of International Application No. PCT/US97/15892, filed Sep. 8, 1997 which claims the benefit of the following three provisionals: U.S. Provisional Application No. 60/056,590 filed Aug. 20, 1997; U.S. Provisional Application No. 60/044,821 filed Apr. 25, 1997; and U.S. Provisional Application No. 60/025,855 filed Sep. 9, 1996.

FIELD OF THE INVENTION

The present invention is directed generally to a system and method for locating people and/or objects, and in particular, to a system and method for locating a wireless mobile station by pattern recognition/matching on wireless signal characteristics obtained from wireless communication with a mobile station, and optionally in combination with other mobile station location estimators based on, e.g., coverage area, GPS, TDOA, and AOA location techniques.

BACKGROUND

Wireless communications systems are becoming increasingly important worldwide. Wireless cellular telecommunications systems are rapidly replacing conventional wire-based telecommunications systems in many applications. Cellular radio telephone networks (“CRT”), and specialized mobile radio and mobile data radio networks are examples. The general principles of wireless cellular telephony have been described variously, for example in U.S. Pat. No. 5,295,180 to Vendetti, et al, which is incorporated herein by reference.

There is great interest in using existing infrastructures for wireless communication systems for locating people and/or objects in a cost effective manner. Such a capability would be invaluable in a variety of situations, especially in emergency or crime situations. Due to the substantial benefits of such a location system, several attempts have been made to design and implement such a system.

Systems have been proposed that rely upon signal strength and trilateralization techniques to permit location include those disclosed in U.S. Pat. Nos. 4,818,998 and 4,908,629 to Apsell et al. (“the Apsell patents”) and U.S. Pat. No. 4,891,650 to Sheffer (“the Sheffer patent”). However, these systems have drawbacks that include high expense in that special purpose electronics are required. Furthermore, the systems are generally only effective in line-of-sight conditions, such as rural settings. Radio wave surface reflections, refractions and ground clutter cause significant distortion, in determining the location of a signal source in most geographical areas that are more than sparsely populated. Moreover, these drawbacks are particularly exacerbated in dense urban canyon (city) areas, where errors and/or conflicts in location measurements can result in substantial inaccuracies.

Another example of a location system using time of arrival and triangulation for location are satellite-based systems, such as the military and commercial versions of the Global Positioning Satellite system (“GPS”). GPS can provide accurate position determination (i.e., about 100 meters error for the commercial version of GPS) from a time-based signal received simultaneously from at least three satellites. A ground-based GPS receiver at or near the object to be located determines the difference between the time at which each satellite transmits a time signal and the time at which the signal is received and, based on the time differentials, determines the object's location. However, the GPS is impractical in many applications. The signal power levels from the satellites are low and the GPS receiver requires a clear, line-of-sight path to at least three satellites above a horizon of about 60 degrees for effective operation. Accordingly, inclement weather conditions, such as clouds, terrain features, such as hills and trees, and buildings restrict the ability of the GPS receiver to determine its position. Furthermore, the initial GPS signal detection process for a GPS receiver is relatively long (i.e., several minutes) for determining the receiver's position. Such delays are unacceptable in many applications such as, for example, emergency response and vehicle tracking.

Differential GPS, or DGPS systems offer correction schemes to account for time synchronization drift. Such correction schemes include the transmission of correction signals over a two-way radio link or broadcast via FM radio station subcarriers. These systems have been found to be awkward and have met with limited success.

Additionally, GPS-based location systems have been attempted in which the received GPS signals are transmitted to a central data center for performing location calculations. Such systems have also met with limited success. In brief, each of the various GPS embodiments have the same fundamental problems of limited reception of the satellite signals and added expense and complexity of the electronics required for an inexpensive location mobile station or handset for detecting and receiving the GPS signals from the satellites.

Radio Propagation Background

The behavior of a mobile radio signal in the general environment is unique and complicated. Efforts to perform correlations between radio signals and distance between a base station and a mobile station are similarly complex. Repeated attempts to solve this problem in the past have been met with only marginal success. Factors include terrain undulations, fixed and variable clutter, atmospheric conditions, internal radio characteristics of cellular and PCS systems, such as frequencies, antenna configurations, modulation schemes, diversity methods, and the physical geometries of direct, refracted and reflected waves between the base stations and the mobile. Noise, such as man-made externally sources (e.g., auto ignitions) and radio system co-channel and adjacent channel interference also affect radio reception and related performance measurements, such as the analog carrier-to-interference ratio (C/I), or digital energy-per-bit/Noise density ratio (E_(b/No)) and are particular to various points in time and space domains.

RF Propagation in Free Space

Before discussing real world correlations between signals and distance, it is useful to review the theoretical premise, that of radio energy path loss across a pure isotropic vacuum propagation channel, and its dependencies within and among various communications channel types. FIG. 1 illustrates a definition of channel types arising in communications:

Over the last forty years various mathematical expressions have been developed to assist the radio mobile cell designer in establishing the proper balance between base station capital investment and the quality of the radio link, typically using radio energy field-strength, usually measured in microvolts/meter, or decibels. First consider Hata's single ray model. A simplified radio channel can be described as:

G _(i) =L _(p) +F+L _(f) +L _(m) +L _(b) −G _(t) +G _(r)  (Equation 1)

where

G_(i)=system gain in decibels

L_(p)=free space path loss in dB,

F=fade margin in dB,

L_(f)=transmission line loss from coaxials used to connect radio to antenna, in dB,

L_(m)=miscellaneous losses such as minor antenna misalignment, coaxial corrosion, increase in the receiver noise figure due to aging, in dB,

L_(b)=branching loss due to filter and circulator used to combine or split transmitter and receiver signals in a single antenna

G_(t)=gain of transmitting antenna

G_(r)=gain of receiving antenna

Free space path loss L_(p) as discussed in Mobile Communications Design Fundamentals, William C. Y. Lee, 2nd, Ed across the propagation channel is a function of distance d, frequency f (for f values <1 GHz, such as the 890-950 mHz cellular band):

$\begin{matrix} {\frac{P_{or}}{P_{t}} = \frac{1}{\left( {4\pi \; {dfc}} \right)^{2}}} & \left( {{equation}\mspace{14mu} 2} \right) \end{matrix}$

where

P_(or)=received power in free space

P_(t)=transmitting power

c=speed of light,

The difference between two received signal powers in free space,

$\begin{matrix} {{{\Delta_{p}(10)}{\log \left( \frac{p_{{or}\; 2}}{P_{{or}\; 1}} \right)}} - {(20){\log \left( \frac{d_{1}}{d_{2}} \right)}({dB})}} & \left( {{equation}\mspace{14mu} 3} \right) \end{matrix}$

indicates that the free propagation path loss is 20 dB per decade. Frequencies between 1 GHz and 2 GHz experience increased values in the exponent, ranging from 2 to 4, or 20 to 40 dB/decade, which would be predicted for the new PCS 1.8-1.9 GHz band.

This suggests that the free propagation path loss is 20 dB per decade. However, frequencies between 1 GHz and 2 GHz experience increased values in the exponent, ranging from 2 to 4, or 20 to 40 dB/decade, which would be predicted for the new PCS 1.8-1.9 GHz band. One consequence from a location perspective is that the effective range of values for higher exponents is an increased at higher frequencies, thus providing improved granularity of ranging correlation.

Environmental Clutter and RF Propagation Effects

Actual data collected in real-world environments uncovered huge variations with respect to the free space path loss equation, giving rise to the creation of many empirical formulas for radio signal coverage prediction. Clutter, either fixed or stationary in geometric relation to the propagation of the radio signals, causes a shadow effect of blocking that perturbs the free space loss effect. Perhaps the best known model set that characterizes the average path loss is Hata's, “Empirical Formula for Propagation Loss in Land Mobile Radio”, M. Hata, IEEE Transactions VT-29, pp. 317-325, August 1980, three pathloss models, based on Okumura's measurements in and around Tokyo, “Field Strength and its Variability in VHF and UHF Land Mobile Service”, Y. Okumura, et al, Review of the Electrical Communications laboratory, Vol 16, pp 825-873, September-October 1968.

The typical urban Hata model for L_(p) was defined as L_(p)=L_(hu):

L _(Hu)=69.55+26.16 log(f)−13.82 log(h _(BS))−a(h _(MS))+((44.9−6.55 log(H _(BS))log(d)[dB])  (Equation 4)

where

-   -   L_(Hu)=path loss, Hata urban     -   h_(BS)=base station antenna height     -   h_(MS)=mobile station antenna height     -   d=distance BS-MS in km     -   a(h_(MS)) is a correction factor for small and medium sized         cities, found to be:

1 log(f−0.7)h _(Ms)−1.56 log(f−0.8)=a(h _(MS))  (Equation 5)

For large cities the correction factor was found to be:

a(h _(MS))=3.2[log 11.75h _(MS)]²−4.97  (Equation 6)

assuming f is equal to or greater than 400 mHz.

The typical suburban model correction was found to be:

$\begin{matrix} {L_{H_{suburban}} = {L_{Hu} - {2\left\lbrack {\log \left( \frac{f}{28} \right)}^{2} \right\rbrack} - {5.4\lbrack{dB}\rbrack}}} & \left( {{Equation}\mspace{14mu} 7} \right) \end{matrix}$

The typical rural model modified the urban formula differently, as seen below:

L _(Hrural) =L _(Hu)−4.78(log f)²+18.33 log f−40.94 [dB]  (Equation 8)

Although the Hata model was found to be useful for generalized RF wave prediction in frequencies under 1 GHz in certain suburban and rural settings, as either the frequency and/or clutter increased, predictability decreased. In current practice, however, field technicians often have to make a guess for dense urban an suburban areas (applying whatever model seems best), then installing a base stations and begin taking manual measurements. Coverage problems can take up to a year to resolve.

Relating Received Signal Strength to Location

Having previously established a relationship between d and P_(or), reference equation 2 above: d represents the distance between the mobile station (MS) and the base station (BS); P_(or) represents the received power in free space) for a given set of unchanging environmental conditions, it may be possible to dynamically measure P_(or) and then determine d.

In 1991, U.S. Pat. No. 5,055,851 to Sheffer taught that if three or more relationships have been established in a triangular space of three or more base stations (BSs) with a location database constructed having data related to possible mobile station (MS) locations, then arculation calculations may be performed, which use three distinct P_(or) measurements to determine an X,Y, two dimensional location, which can then be projected onto an area map. The triangulation calculation is based on the fact that the approximate distance of the mobile station (MS) from any base station (BS) cell can be calculated based on the received signal strength. Sheffer acknowledges that terrain variations affect accuracy, although as noted above, Sheffer's disclosure does not account for a sufficient number of variables, such as fixed and variable location shadow fading, which are typical in dense urban areas with moving traffic.

Most field research before about 1988 has focused on characterizing (with the objective of RF coverage prediction) the RF propagation channel (i.e., electromagnetic radio waves) using a single-ray model, although standard fit errors in regressions proved dismal (e.g., 40-80 dB). Later, multi-ray models were proposed, and much later, certain behaviors were studied with radio and digital channels. In 1981, Vogler proposed that radio waves at higher frequencies could be modeled using optics principles. In 1988 Walfisch and Bertoni applied optical methods to develop a two-ray model, which when compared to certain highly specific, controlled field data, provided extremely good regression fit standard errors of within 1.2 dB.

In the Bertoni two ray model it was assumed that most cities would consist of a core of high-rise buildings surrounded by a much larger area having buildings of uniform height spread over regions comprising many square blocks, with street grids organizing buildings into rows that are nearly parallel. Rays penetrating buildings then emanating outside a building were neglected. FIG. 2 provides a basis for the variables.

After a lengthy analysis it was concluded that path loss was a function of three factors: (1) the path loss between antennas in free space; (2) the reduction of rooftop wave fields due to settling; and (3) the effect of diffraction of the rooftop fields down to ground level. The last two factors were summarily termed Lex, given by:

$\begin{matrix} {L_{ex} = {57.1 + A + {\log (f)} + R - \left( {\left( {18{\log (H)}} \right) - {18{\log \left\lbrack {1 - \frac{R^{2}}{17H}} \right\rbrack}}} \right.}} & \left( {{Equation}\mspace{14mu} 9} \right) \end{matrix}$

The influence of building geometry is contained in A:

$\begin{matrix} {A = {{5{\log \left\lbrack \left( \frac{d}{2} \right)^{2} \right\rbrack}} - {9\log \; d}\; + {20\log \; \left\{ {\tan \left\lbrack {2\left( {h - H_{MS}} \right)} \right\rbrack}^{1} \right\}}}} & \left( {{Equation}\mspace{14mu} 10} \right) \end{matrix}$

However, a substantial difficulty with the two-ray model in practice is that it requires a substantial amount of data regarding building dimensions, geometries, street widths, antenna gain characteristics for every possible ray path, etc. Additionally, it requires an inordinate amount of computational resources and such a model is not easily updated or maintained.

Unfortunately, in practice clutter geometries and building heights are random. Moreover, data of sufficient detail has been extremely difficult to acquire, and regression standard fit errors are poor; i.e., in the general case, these errors were found to be 40-60 dB. Thus the two-ray model approach, although sometimes providing an improvement over single ray techniques, still did not predict RF signal characteristics in the general case to level of accuracy desired (<10 dB).

Work by Greenstein has since developed from the perspective of measurement-based regression models, as opposed to the previous approach of predicting-first, then performing measurement comparisons. Apparently yielding to the fact that low-power, low antenna (e.g., 12-25 feet above ground) height PCS microcell coverage was insufficient in urban buildings, Greenstein, et al, authored “Performance Evaluations for Urban Line-of-sight Microcells Using a Multi-ray Propagation Model”, in IEEE Globecom Proceedings, 12/91. This paper proposed the idea of formulating regressions based on field measurements using small PCS microcells in a lineal microcell geometry (i.e., geometries in which there is always a line-of-sight (LOS) path between a subscriber's mobile and its current microsite).

Additionally, Greenstein studied the communication channels variable Bit-Error-Rate (BER) in a spatial domain, which was a departure from previous research that limited field measurements to the RF propagation channel signal strength alone. However, Greenstein based his finding on two suspicious assumptions: 1) he assumed that distance correlation estimates were identical for uplink and downlink transmission paths; and 2) modulation techniques would be transparent in terms of improved distance correlation conclusions. Although some data held very correlations, other data and environments produced poor results. Accordingly, his results appear unreliable for use in general location context.

In 1993 Greenstein, et al, authored “A Measurement-Based Model for Predicting Coverage Areas of Urban Microcells”, in the IEEE Journal On Selected Areas in Communications, Vol. 11, No. 7, 9/93. Greenstein reported a generic measurement-based model of RF attenuation in terms of constant-value contours surrounding a given low-power, low antenna microcell environment in a dense, rectilinear neighborhood, such as New York City. However, these contours were for the cellular frequency band. In this case, LOS and non-LOS clutter were considered for a given microcell site. A result of this analysis was that RF propagation losses (or attenuations), when cell antenna heights were relatively low, provided attenuation contours resembling a spline plane curve depicted as an asteroid, aligned with major street grid patterns. Further, Greenstein found that convex diamond-shaped RF propagation loss contours were a common occurrence in field measurements in a rectilinear urban area. The special plane curve asteroid is represented by the formula x^(2/3)+y^(2/3)=r^(2/3). However, these results alone have not been sufficiently robust and general to accurately locate an MS, due to the variable nature of urban clutter spatial arrangements.

At Telesis Technology in 1994 Howard Xia, et al, authored “Microcellular Propagation Characteristics for Personal Communications in Urban and Suburban Environments”, in IEEE Transactions of Vehicular Technology, Vol. 43, No. 3, 8/94, which performed measurements specifically in the PCS 1.8 to 1.9 GHz frequency band. Xia found corresponding but more variable outcome results in San Francisco, Oakland (urban) and the Sunset and Mission Districts (suburban).

Summary of Factors Affecting RF Propagation

The physical radio propagation channel perturbs signal strength, frequency (causing rate changes, phase delay, signal to noise ratios (e.g., C/I for the analog case, or E_(b/No), RF energy per bit, over average noise density ratio for the digital case) and Doppler-shift. Signal strength is usually characterized by:

-   -   Free Space Path Loss (L_(P))     -   Slow fading loss or margin (L_(slow))     -   Fast fading loss or margin (L_(fast))

Loss due to slow fading includes shadowing due to clutter blockage (sometimes included in Lp). Fast fading is composed of multipath reflections which cause: 1) delay spread; 2) random phase shift or Rayleigh fading; and 3) random frequency modulation due to different Doppler shifts on different paths.

Summing the path loss and the two fading margin loss components from the above yields a total path loss of:

L _(total) =L _(p) +L _(slow) +L _(fast)

Referring to FIG. 3, the figure illustrates key components of a typical cellular and PCS power budget design process. The cell designer increases the transmitted power P_(TX) by the shadow fading margin L_(slow) which is usually chosen to be within the 1-2 percentile of the slow fading probability density function (PDF) to minimize the probability of unsatisfactorily low received power level P_(RX) at the receiver. The P_(RX) level must have enough signal to noise energy level (e.g., 10 dB) to overcome the receiver's internal noise level (e.g., −118 dBm in the case of cellular 0.9 GHz), for a minimum voice quality standard. Thus in the example P_(RX) must never be below −108 dBm, in order to maintain the quality standard.

Additionally the short term fast signal fading due to multipath propagation is taken into account by deploying fast fading margin L_(fast), which is typically also chosen to be a few percentiles of the fast fading distribution. The 1 to 2 percentiles compliment other network blockage guidelines. For example the cell base station traffic loading capacity and network transport facilities are usually designed for a 1-2 percentile blockage factor as well. However, in the worst-case scenario both fading margins are simultaneously exceeded, thus causing a fading margin overload.

In Roy, Steele's, text, Mobile Radio Communications, IEEE Press, 1992, estimates for a GSM system operating in the 1.8 GHz band with a transmitter antenna height of 6.4 m and an MS receiver antenna height of 2 m, and assumptions regarding total path loss, transmitter power would be calculated as follows:

TABLE 1 GSM Power Budget Example Parameter dBm value Will require L_(slow) 14 L_(fast) 7 Ll_(path) 110 Min. RX pwr required −104 TXpwr = 27 dBm Steele's sample size in a specific urban London area of 80,000 LOS measurements and data reduction found a slow fading variance of

σ=7 dB

assuming lognormal slow fading PDF and allowing for a 1.4% slow fading margin overload, thus

L_(slow)=2σ=14 dB

The fast fading margin was determined to be:

L_(fast)=7 dB

In contrast, Xia's measurements in urban and suburban California at 1.8 GHz uncovered flat-land shadow fades on the order of 25-30 dB when the mobile station (MS) receiver was traveling from LOS to non-LOS geometries. In hilly terrain fades of +5 to −50 dB were experienced. Thus it is evident that attempts to correlate signal strength with MS ranging distance suggest that error ranges could not be expected to improve below 14 dB, with a high side of 25 to 50 dB. Based on 20 to 40 dB per decade, Corresponding error ranges for the distance variable would then be on the order of 900 feet to several thousand feet, depending upon the particular environmental topology and the transmitter and receiver geometries.

DESCRIPTION OF TERMS

The following definitions are provided for convenience. In general, the definitions here are also defined elsewhere in this document as well.

(1.1) The term “wireless” herein is, in general, an abbreviation for “digital wireless”, and in particular, “wireless” refers to digital radio signaling using one of standard digital protocols such as CDMA, NAMPS, AMPS, TDMA and GSM, as one skilled in the art will understand. (1.2) As used herein, the term “mobile station” (equivalently, MS) refers to a wireless device that is at least a transmitting device, and in most cases is also a wireless receiving device, such as a portable radio telephony handset. Note that in some contexts herein instead or in addition to MS, the following terms are also used: “personal station” (PS), and “location unit” (LU). In general, these terms may be considered synonymous. However, the later two terms may be used when referring to reduced functionality communication devices in comparison to a typical digital wireless mobile telephone. (1.3) The term, “infrastructure”, denotes the network of telephony communication services, and more particularly, that portion of such a network that receives and processes wireless communications with wireless mobile stations. In particular, this infrastructure includes telephony wireless base stations (BS) such as those for radio mobile communication systems based on CDMA, AMPS, NAMPS, TDMA, and GSM wherein the base stations provide a network of cooperative communication channels with an air interface with the MS, and a conventional telecommunications interface with a Mobile Switch Center (MSC). Thus, an MS user within an area serviced by the base stations may be provided with wireless communication throughout the area by user transparent communication transfers (i.e., “handoffs”) between the user's MS and these base stations in order to maintain effective telephony service. The mobile switch center (MSC) provides communications and control connectivity among base stations and the public telephone network 124. (1.4) The phrase, “composite wireless signal characteristic values” denotes the result of aggregating and filtering a collection of measurements of wireless signal samples, wherein these samples are obtained from the wireless communication between an MS to be located and the base station infrastructure (e.g., a plurality of networked base stations). However, other phrases are also used herein to denote this collection of derived characteristic values depending on the context and the likely orientation of the reader. For example, when viewing these values from a wireless signal processing perspective of radio engineering, as in the descriptions of the subsequent Detailed Description sections concerned with the aspects of the present invention for receiving MS signal measurements from the base station infrastructure, the phrase typically used is: “RF signal measurements”. Alternatively, from a data processing perspective, the phrases: “location signature cluster” and “location signal data” are used to describe signal characteristic values between the MS and the plurality of infrastructure base stations substantially simultaneously detecting MS transmissions. Moreover, since the location communications between an MS and the base station infrastructure typically include simultaneous communications with more than one base station, a related useful notion is that of a “location signature” which is the composite wireless signal characteristic values for signal samples between an MS to be located and a single base station. Also, in some contexts, the phrases: “signal characteristic values” or “signal characteristic data” are used when either or both a location signature(s) and/or a location signature cluster(s) are intended.

SUMMARY

A novel aspect of the present disclosure relies on the discovery that in many areas where MS location services are desired, the wireless signal measurements obtained from communications between the target MS and the base station infrastructure are extensive enough to provide sufficiently unique or peculiar values so that the pattern of values alone may identify the location of the target MS. Further, assuming a sufficient amount of such location identifying pattern information is captured in the composite wireless signal characteristic values for a target MS, and that there is a technique for matching such wireless signal patterns to geographical locations, then a wireless location computational model or estimator (referred to herein as a “first order model” or FOM) based on this technique may generate a reasonably accurate target MS location estimate. Moreover, if an embodiment of the present disclosure (e.g., the location signature data base described hereinbelow) has captured sufficient wireless signal data from location communications between MSs and the base station infrastructure wherein the locations of the MSs are also verified and captured, then this captured data (e.g., location signatures) can be used to train or calibrate such models to associate the location of a target MS with the distinctive signal characteristics between the target MS and one or more base stations. Accordingly, at least one embodiment of the present disclosure includes one or more FOMs that may be generally denoted as classification models wherein such FOMs are trained or calibrated to associate particular composite wireless signal characteristic values with a geographical location where a target MS could likely generate the wireless signal samples from which the composite wireless signal characteristic values are derived. Further, at least one embodiment of the present disclosure includes the capability for training (calibrating) and retraining (recalibrating) such classification FOMs to automatically maintain the accuracy of these models even though substantial changes to the radio coverage area may occur, such as the construction of a new high rise building or seasonal variations (due to, for example, foliage variations).

Note that such classification FOMs that are trained or calibrated to identify target MS locations by the wireless signal patterns produced constitute a particularly novel aspect of the present disclosure. It is well known in the wireless telephony art that the phenomenon of signal multipath and shadow fading renders most analytical location computational techniques such as time-of-arrival (TOA) or time-difference-of-arrival (TDOA) substantially useless in urban areas and particularly in dense urban areas. However, this same multipath phenomenon also may produce substantially distinct or peculiar signal measurement patterns, wherein such a pattern coincides with a relatively small geographical area. Thus, embodiments of the present disclosure utilizes multipath as an advantage for increasing accuracy where for previous location systems multipath has been a source of substantial inaccuracies. Moreover, it is worthwhile to note that the utilization of classification FOMs in high multipath environments is especially advantageous in that high multipath environments are typically densely populated. Thus, since such environments are also capable of yielding a greater density of MS location signal data from MSs whose actual locations can be obtained, there can be a substantial amount of training or calibration data captured by an embodiment of the present disclosure for training or calibrating such classification FOMs and for progressively improving the MS location accuracy of such models. Moreover, since it is also a related aspect of an embodiment of the present disclosure to include a plurality stationary, low cost, low power “location detection base stations” (LBS), each having both restricted range MS detection capabilities and a built-in MS, a grid of such LBSs can be utilized for providing location signal data (from the built-in MS) for (re)training or (re)calibrating such classification FOMs.

In one embodiment of the present disclosure, one or more classification FOMs may each include a learning module such as an artificial neural network (ANN) for associating target MS location signal data with a target MS location estimate. Additionally, one or more classification FOMs may be statistical prediction models based on such statistical techniques as, for example, principle decomposition, partial least squares, or other regression techniques.

It is an objective of the present disclosure to provide a system and method for wireless telecommunication systems for accurately locating people and/or objects in a cost effective manner. Additionally, it is an objective of the present disclosure to provide such location capabilities using the measurements from wireless signals communicated between mobile stations and a network of base stations, wherein the same communication standard or protocol is utilized for location as is used by the network of base stations for providing wireless communications with mobile stations for other purposes such as voice communication and/or visual communication (such as text paging, graphical or video communications). Related objectives for various embodiments of the present disclosure include providing a system and method that:

(2.1) can be readily incorporated into existing commercial wireless telephony systems with few, if any, modifications of a typical telephony wireless infrastructure; (2.2) can use the native electronics of typical commercially available, or likely to be available, telephony wireless mobile stations (e.g., handsets) as location devices; (2.3) can be used for effectively locating people and/or objects wherein there are few (if any) line-of-sight wireless receivers for receiving location signals from a mobile station (herein also denoted MS); (2.4) can be used not only for decreasing location determining difficulties due to multipath phenomena but in fact uses such multipath for providing more accurate location estimates; (2.5) can be used for integrating a wide variety of location techniques in a straight-forward manner; (2.6) can substantially automatically adapt and/or (re)train and/or (re)calibrate itself according to changes in the environment and/or terrain of a geographical area where the present disclosure is utilized; (2.7) can utilize a plurality of wireless location estimators based on different wireless location technologies (e.g., GPS location techniques, terrestrial base station signal timing techniques for triangulation and/or trilateration, wireless signal angle of arrival location techniques, techniques for determining a wireless location within a building, techniques for determining a mobile station location using wireless location data collected from the wireless coverage area for, e.g., location techniques using base station signal coverage areas, signal pattern matching location techniques and/or stochastic techniques), wherein each such estimator may be activated independently of one another, whenever suitable data is provided thereto and/or certain conditions, e.g., specific to the estimator are met; (2.8) can provide a common interface module from which a plurality of the location estimators can be activated and/or provided with input; (2.9) provides resulting mobile station location estimates to location requesting applications (e.g., for 911 emergency, the fire or police departments, taxi services, vehicle location, etc.) via an output gateway, wherein this gateway:

-   -   (a) routes the mobile station location estimates to the         appropriate location application(s) via a communications network         such as a wireless network, a public switched telephone network,         a short messaging service (SMS), and the Internet,     -   (b) determines the location granularity and representation         desired by each location application requesting a location of a         mobile station, and/or     -   (c) enhances the received location estimates by, e.g.,         performing additional processing such as “snap to street”         functions for mobile stations known to reside in a vehicle.

Yet another objective is to provide a low cost location system and method, adaptable to wireless telephony systems, for using simultaneously a plurality of location techniques for synergistically increasing MS location accuracy and consistency.

It is yet another objective of the present disclosure that at least some of the following MS location techniques can be utilized by various embodiments of the present disclosure:

(3.1) time-of-arrival wireless signal processing techniques; (3.2) time-difference-of-arrival wireless signal processing techniques; (3.3) adaptive wireless signal processing techniques having, for example, learning capabilities and including, for instance, artificial neural net and genetic algorithm processing; (3.4) signal processing techniques for matching MS location signals with wireless signal characteristics of known areas; (3.5) conflict resolution techniques for resolving conflicts in hypotheses for MS location estimates; (3.6) enhancement of MS location estimates through the use of both heuristics and historical data associating MS wireless signal characteristics with known locations and/or environmental conditions.

Yet another objective is to provide location estimates in terms of time vectors, which can be used to establish motion, speed, and an extrapolated next location in cases where the MS signal subsequently becomes unavailable.

The present disclosure relates to a wireless mobile station location system, and in particular, various subsystems related thereto such as a wireless location gateway, and the combining or hybriding of a plurality of wireless location techniques.

Regarding a wireless location gateway, this term refers to a communications network node whereat a plurality of location requests are received for locating various mobile stations from various sources (e.g., for E911 requests, for stolen vehicle location, for tracking of vehicles traveling cross country, etc.), and for each such request and the corresponding mobile station to be located, this node: (a) activates one or more wireless location estimators for locating the mobile station, (b) receives one or more location estimates of the mobile station from the location estimators, and (c) transmits a resulting location estimate(s) to, e.g., an application which made the request. Moreover, such a gateway typically will likely activate location estimators according to the particulars of each individual wireless location request, e.g., the availability of input data needed by particular location estimators. Additionally, such a gateway will typically have sufficiently well defined uniform interfaces so that such location estimators can be added and/or deleted to, e.g., provide different location estimators for performing wireless location different coverage areas.

The present disclosure encompasses such wireless location gateways. Thus, for locating an identified mobile station, the location gateway embodiments of the present disclosure may activate one or more of a plurality of location estimators depending on, e.g., (a) the availability of particular types of wireless location data for locating the mobile station, and (b) the location estimators accessable by the location gateway. Moreover, a plurality of location estimators may be activated for locating the mobile station in a single location, or different ones of such location estimators may be activated to locate the mobile station at different locations. Moreover, the location gateway of the present disclosure may have incorporated therein one or more of the location estimators, and/or may access geographically distributed location estimators via requests through a communications network such as the Internet.

In particular, the location gateway of the present disclosure may access, in various instances of locating mobile stations, various location estimators that utilize one or more of the following wireless location techniques:

-   -   (a) A GPS location technique such as, e.g., one of the GPS         location techniques as described in the Background section         hereinabove;     -   (b) A technique for computing a mobile station location that is         dependent upon geographical offsets of the mobile station from         one or more terrestrial transceivers (e.g., base stations of a         commercial radio service provider). Such offsets may be         determined from signal time delays between such transceivers and         the mobile station, such as by time of arrival (TOA) and/or time         difference of arrival (TDOA) techniques as is discussed further         hereinbelow. Moreover, such offsets may be determined using both         the forward and reverse wireless signal timing measurements of         transmissions between the mobile station and such terrestrial         transceivers. Additionally, such offsets may be directional         offsets, wherein a direction is determined from such a         transceiver to the mobile station;     -   (c) Various wireless signal pattern matching, associative,         and/or stochastic techniques for performing comparisons and/or         using a learned association between:         -   (i) characteristics of wireless signals communicated between             a mobile station to be located and a network of wireless             transceivers (e.g., base stations), and         -   (ii) previously obtained sets of characteristics of wireless             signals (from each of a plurality of locations), wherein             each set was communicated, e.g., between a network of             transceivers (e.g., the fixed location base stations of a             commercial radio service provider), and, some one of the             mobile stations available for communicating with the             network;     -   (d) Indoor location techniques using a distributed antenna         system;     -   (e) Techniques for locating a mobile station, wherein, e.g.,         wireless coverage areas of individual fixed location         transceivers (e.g., fixed location base stations) are utilized         for determining the mobile station's location (e.g.,         intersecting such coverage areas for determining a location);     -   (f) Location techniques that use communications from low power,         low functionality base stations (denoted “location base         stations”); and     -   (g) Any other location techniques that may be deemed worthwhile         to incorporate into an embodiment of the present disclosure.

Accordingly, some embodiments of the present disclosure may be viewed as platforms for integrating wireless location techniques in that wireless location computational models (denoted “first order models” or “FOMs” hereinbelow) may be added and/or deleted from such embodiments of the disclosure without changing the interface to further downstream processes. That is, one aspect of the disclosure is the specification of a common data interface between such computational models and subsequent location processing such as processes for combining of location estimates, tracking mobile stations, and/or outputting location estimates to location requesting applications.

Moreover, it should be noted that the present disclosure also encompasses various hybrid approaches to wireless location, wherein various combinations of two or more of the location techniques (a) through (g) immediately above may be used in locating a mobile station at substantially a single location. Thus, location information may be obtained from a plurality of the above location techniques for locating a mobile station, and the output from such techniques can be synergistically used for deriving therefrom an enhanced location estimate of the mobile station.

It is a further aspect of the present disclosure that it may be used to wirelessly locate a mobile station: (a) from which a 911 emergency call is performed, (b) for tracking a mobile station (e.g., a truck traveling across country), (c) for routing a mobile station, and (d) locating people and/or animals, including applications for confinement to (and/or exclusion from) certain areas.

It is a further aspect of the present disclosure that it may be decomposed into: (i) a first low level wireless signal processing subsystem for receiving, organizing and conditioning low level wireless signal measurements from a network of base stations cooperatively linked for providing wireless communications with mobile stations (MSs); and (ii) a second high level signal processing subsystem for performing high level data processing for providing most likelihood location estimates for mobile stations.

Thus, the present disclosure may be considered as a novel signal processor that includes at least the functionality for the high level signal processing subsystem mentioned hereinabove. Accordingly, assuming an appropriate ensemble of wireless signal measurements characterizing the wireless signal communications between a particular MS and a networked wireless base station infrastructure have been received and appropriately filtered of noise and transitory values (such as by an embodiment of the low level signal processing subsystem disclosed in a copending PCT patent application PCT/US97/15933 titled, “Wireless Location Using A Plurality of Commercial Network Infrastructures,” by F. W. LeBlanc et. al., filed Sep. 8, 1997 from which U.S. Pat. No. 6,236,365, filed Jul. 8, 1999 is the U.S. national counterpart, these two references being herein fully incorporated by reference), the present disclosure uses the output from such a low level signal processing system for determining a most likely location estimate of an MS.

That is, once the following steps are appropriately performed (e.g., by the LeBlanc U.S. Pat. No. 6,236,365):

-   -   (4.1) receiving signal data measurements corresponding to         wireless communications between an MS to be located (herein also         denoted the “target MS”) and a wireless telephony         infrastructure;     -   (4.2) organizing and processing the signal data measurements         received from a given target MS and surrounding BSs so that         composite wireless signal characteristic values may be obtained         from which target MS location estimates may be subsequently         derived. In particular, the signal data measurements are         ensembles of samples from the wireless signals received from the         target MS by the base station infrastructure, wherein these         samples are subsequently filtered using analog and digital         spectral filtering,         the present disclosure provides the objectives mentioned above         by the following steps:     -   (4.3) providing the composite signal characteristic values to         one or more MS location hypothesizing computational models (also         denoted herein as “first order models” and also “location         estimating models”), wherein each such model subsequently         determines one or more initial estimates of the location of the         target MS based on, for example, the signal processing         techniques 2.1 through 2.3 above. Moreover, each of the models         output MS location estimates having substantially identical data         structures (each such data structure denoted a “location         hypothesis”). Additionally, each location hypothesis may also         include a confidence value indicating the likelihood or         probability that the target MS whose location is desired resides         in a corresponding location estimate for the target MS;     -   (4.4) adjusting or modifying location hypotheses output by the         models according to, for example, 2.4 through 2.6 above so that         the adjusted location hypotheses provide better target MS         location estimates. In particular, such adjustments are         performed on both the target MS location estimates of the         location hypotheses as well as their corresponding confidences;         and     -   (4.4) subsequently computing a “most likely” target MS location         estimate for outputting to a location requesting application         such as 911 emergency, the fire or police departments, taxi         services, etc. Note that in computing the most likely target MS         location estimate a plurality of location hypotheses may be         taken into account. In fact, it is an important aspect of the         present disclosure that the most likely MS location estimate is         determined by computationally forming a composite MS location         estimate utilizing such a plurality of location hypotheses so         that, for example, location estimate similarities between         location hypotheses can be effectively utilized.

Referring now to (4.3) above, the filtered and aggregated wireless signal characteristic values are provided to a number of location hypothesizing models (denoted First Order Models, or FOMs), each of which yields a location estimate or location hypothesis related to the location of the target MS. In particular, there are location hypotheses for both providing estimates of where the target MS is likely to be and where the target MS is not likely to be. Moreover, it is an aspect of the present disclosure that confidence values of the location hypotheses are provided as a continuous range of real numbers from, e.g., −1 to 1, wherein the most unlikely areas for locating the target MS are given a confidence value of −1, and the most likely areas for locating the target MS are given a confidence value of 1. That is, confidence values that are larger indicate a higher likelihood that the target MS is in the corresponding MS estimated area, wherein −1 indicates that the target MS is absolutely NOT in the estimated area, 0 indicates a substantially neutral or unknown likelihood of the target MS being in the corresponding estimated area, and 1 indicates that the target MS is absolutely within the corresponding estimated area.

Referring to (4.4) above, it is an aspect of the present disclosure to provide location hypothesis enhancing and evaluation techniques that can adjust target MS location estimates according to historical MS location data and/or adjust the confidence values of location hypotheses according to how consistent the corresponding target MS location estimate is: (a) with historical MS signal characteristic values, (b) with various physical constraints, and (c) with various heuristics. In particular, the following capabilities are provided by the present disclosure:

-   -   (5.1) a capability for enhancing the accuracy of an initial         location hypothesis, H, generated by a first order model,         FOM_(H), by using H as, essentially, a query or index into an         historical data base (denoted herein as the location signature         data base), wherein this data base includes: (a) a plurality of         previously obtained location signature clusters (i.e., composite         wireless signal characteristic values) such that for each such         cluster there is an associated actual or verified MS locations         where an MS communicated with the base station infrastructure         for locating the MS, and (b) previous MS location hypothesis         estimates from FOM_(H) derived from each of the location         signature clusters stored according to (a);     -   (5.2) a capability for analyzing composite signal characteristic         values of wireless communications between the target MS and the         base station infrastructure, wherein such values are compared         with composite signal characteristics values of known MS         locations (these latter values being archived in the location         signature data base). In one instance, the composite signal         characteristic values used to generate various location         hypotheses for the target MS are compared against wireless         signal data of known MS locations stored in the location         signature data base for determining the reliability of the         location hypothesizing models for particular geographic areas         and/or environmental conditions;     -   (5.3) a capability for reasoning about the likeliness of a         location hypothesis wherein this reasoning capability uses         heuristics and constraints based on physics and physical         properties of the location geography;     -   (5.4) an hypothesis generating capability for generating new         location hypotheses from previous hypotheses.

As also mentioned above in (3.3), the present disclosure utilizes adaptive signal processing techniques. One particularly important utilization of such techniques includes the automatic tuning so that, e.g., such tuning can be applied to adjusting the values of location processing system parameters that affect the processing performed by embodiments of the present disclosure. For example, such system parameters as those used for determining the size of a geographical area to be specified when retrieving location signal data of known MS locations from the historical (location signature) data base can substantially affect the location processing. In particular, a system parameter specifying a minimum size for such a geographical area may, if too large, cause unnecessary inaccuracies in locating an MS. Accordingly, to accomplish a tuning of such system parameters, an adaptation engine is included in at least one embodiment of the present disclosure for automatically adjusting or tuning parameters used. Note that in one embodiment, the adaptation engine is based on genetic algorithm techniques.

It is a further aspect of the present disclosure that the personal communication system (PCS) infrastructures currently being developed by telecommunication providers offer an appropriate localized infrastructure base upon which to build various personal location systems (PLS) employing an embodiment of the present disclosure and/or utilizing the techniques disclosed herein. In particular, an embodiment of the present disclosure is especially suitable for the location of people and/or objects using code division multiple access (CDMA) wireless infrastructures, although other wireless infrastructures, such as, time division multiple access (TDMA) infrastructures and GSM are also contemplated. Note that CDMA personal communications systems are described in the Telephone Industries Association standard IS-95, for frequencies below 1 GHz, and in the Wideband Spread-Spectrum Digital Cellular System Dual-Mode Mobile Station-Base Station Compatibility Standard, for frequencies in the 1.8-1.9 GHz frequency bands, both of which are incorporated herein by reference. Furthermore, CDMA general principles have also been described, for example, in U.S. Pat. No. 5,109,390, to Gilhousen, et al, filed Nov. 7, 1989, and CDMA Network Engineering Handbook by Qualcomm, Inc., each of which is also incorporated herein by reference.

Notwithstanding the above mentioned CDMA references, a brief introduction of CDMA is given here. Briefly, CDMA is an electromagnetic signal modulation and multiple access scheme based on spread spectrum communication. Each CDMA signal corresponds to an unambiguous pseudorandom binary sequence for modulating the carrier signal throughout a predetermined spectrum of bandwidth frequencies. Transmissions of individual CDMA signals are selected by correlation processing of a pseudonoise waveform. In particular, the CDMA signals are separately detected in a receiver by using a correlator, which accepts only signal energy from the selected binary sequence and despreads its spectrum. Thus, when a first CDMA signal is transmitted, the transmissions of unrelated CDMA signals correspond to pseudorandom sequences that do not match the first signal. Therefore, these other signals contribute only to the noise and represent a self-interference generated by the personal communications system.

As mentioned in the discussion of classification FOMs above, an embodiment of the present disclosure can substantially automatically retrain and/or recalibrate itself to compensate for variations in wireless signal characteristics (e.g., multipath) due to environmental and/or topographic changes to a geographic area serviced by such an embodiment. For example, an embodiment of the present disclosure optionally includes low cost, low power base stations, denoted location base stations (LBS) above, providing, for example, CDMA pilot channels to a very limited area about each such LBS. The location base stations may provide limited voice traffic capabilities, but each is capable of gathering sufficient wireless signal characteristics from an MS within the location base station's range to facilitate locating the MS. Thus, by positioning the location base stations at known locations in a geographic region such as, for instance, on street lamp poles and road signs, additional MS location accuracy can be obtained. That is, due to the low power signal output by such location base stations, for there to be signaling control communication (e.g., pilot signaling and other control signals) between a location base station and a target MS, the MS must be relatively near the location base station. Additionally, for each location base station not in communication with the target MS, it is likely that the MS is not near to this location base station. Thus, by utilizing information received from both location base stations in communication with the target MS and those that are not in communication with the target MS, an embodiment of the present disclosure can substantially narrow the possible geographic areas within which the target MS is likely to be. Further, by providing each location base station (LBS) with a co-located stationary wireless transceiver (denoted a built-in MS above) having similar functionality to an MS, the following advantages are provided:

(6.1) assuming that the co-located base station capabilities and the stationary transceiver of an LBS are such that the base station capabilities and the stationary transceiver communicate with one another, the stationary transceiver can be signaled by another component(s) of an embodiment of the present disclosure to activate or deactivate its associated base station capability, thereby conserving power for the LBS that operate on a restricted power such as solar electrical power; (6.2) the stationary transceiver of an LBS can be used for transferring target MS location information obtained by the LBS to a conventional telephony base station; (6.3) since the location of each LBS is known and can be used in location processing, an embodiment of the present disclosure is able to (re)train and/or (re)calibrate itself in geographical areas having such LBSs. That is, by activating each LBS stationary transceiver so that there is signal communication between the stationary transceiver and surrounding base stations within range, wireless signal characteristic values for the location of the stationary transceiver are obtained for each such base station. Accordingly, such characteristic values can then be associated with the known location of the stationary transceiver for training and/or calibrating various of the location processing modules of an embodiment of the present disclosure such as the classification FOMs discussed above. In particular, such training and/or calibrating may include:

-   -   (i) (re)training and/or (re)calibrating FOMs;     -   (ii) adjusting the confidence value initially assigned to a         location hypothesis according to how accurate the generating FOM         is in estimating the location of the stationary transceiver         using data obtained from wireless signal characteristics of         signals between the stationary transceiver and base stations         with which the stationary transceiver is capable of         communicating; (iii) automatically updating the previously         mentioned historical data base (i.e., the location signature         data base), wherein the stored signal characteristic data for         each stationary transceiver can be used for detecting         environmental and/or topographical changes (e.g., a newly built         high rise or other structures capable of altering the multipath         characteristics of a given geographical area); and     -   (iv) tuning of the location system parameters, wherein the steps         of: (a) modifying various system parameters and (b) testing the         performance of the modified location system on verified mobile         station location data (including the stationary transceiver         signal characteristic data), these steps being interleaved and         repeatedly performed for obtaining better system location         accuracy within useful time constraints.

It is also an aspect of the present disclosure to automatically (re)calibrate as in (6.3) above with signal characteristics from other known or verified locations. In one embodiment of the present disclosure, portable location verifying electronics are provided so that when such electronics are sufficiently near a located target MS, the electronics: (i) detect the proximity of the target MS; (ii) determine a highly reliable measurement of the location of the target MS; (iii) provide this measurement to other location determining components of an embodiment of the present disclosure so that the location measurement can be associated and archived with related signal characteristic data received from the target MS at the location where the location measurement is performed. Thus, the use of such portable location verifying electronics allows an embodiment of the present disclosure to capture and utilize signal characteristic data from verified, substantially random locations for location system calibration as in (6.3) above. Moreover, it is important to note that such location verifying electronics can verify locations automatically wherein it is unnecessary for manual activation of a location verifying process.

One embodiment of the present disclosure includes the location verifying electronics as a “mobile (location) base station” (MBS) that can be, for example, incorporated into a vehicle, such as an ambulance, police car, or taxi. Such a vehicle can travel to sites having a transmitting target MS, wherein such sites may be randomly located and the signal characteristic data from the transmitting target MS at such a location can consequently be archived with a verified location measurement performed at the site by the mobile location base station. Moreover, it is important to note that such a mobile location base station as its name implies also includes base station electronics for communicating with mobile stations, though not necessarily in the manner of a conventional infrastructure base station. In particular, a mobile location base station may only monitor signal characteristics, such as MS signal strength, from a target MS without transmitting signals to the target MS. Alternatively, a mobile location base station can periodically be in bi-directional communication with a target MS for determining a signal time-of-arrival (or time-difference-of-arrival) measurement between the mobile location base station and the target MS. Additionally, each such mobile location base station includes components for estimating the location of the mobile location base station, such mobile location base station location estimates being important when the mobile location base station is used for locating a target MS via, for example, time-of-arrival or time-difference-of-arrival measurements as one skilled in the art will appreciate. In particular, a mobile location base station can include:

(7.1) a mobile station (MS) for both communicating with other components of an embodiment of the present disclosure (such as a location processing center included in an embodiment of the present disclosure); (7.2) a GPS receiver for determining a location of the mobile location base station; (7.3) a gyroscope and other dead reckoning devices; and (7.4) devices for operator manual entry of a mobile location base station location.

Furthermore, a mobile location base station includes modules for integrating or reconciling distinct mobile location base station location estimates that, for example, can be obtained using the components and devices of (7.1) through (7.4) above. That is, location estimates for the mobile location base station may be obtained from: GPS satellite data, mobile location base station data provided by the location processing center, deadreckoning data obtained from the mobile location base station vehicle deadreckoning devices, and location data manually input by an operator of the mobile location base station.

The location estimating system of the present disclosure offers many advantages over existing location systems. The system of the present disclosure, for example, is readily adaptable to existing wireless communication systems and can accurately locate people and/or objects in a cost effective manner. In particular, the present disclosure requires few, if any, modifications to commercial wireless communication systems for implementation. Thus, existing personal communication system infrastructure base stations and other components of, for example, commercial CDMA infrastructures are readily adapted to an embodiment of the present disclosure. An embodiment of the present disclosure can be used to locate people and/or objects that are not in the line-of-sight of a wireless receiver or transmitter, can reduce the detrimental effects of multipath on the accuracy of the location estimate, can potentially locate people and/or objects located indoors as well as outdoors, and uses a number of wireless stationary transceivers for location. An embodiment of the present disclosure employs a number of distinctly different location computational models for location which provides a greater degree of accuracy, robustness and versatility than is possible with existing systems. For instance, the location models provided include not only the radius-radius/TOA and TDOA techniques but also adaptive artificial neural net techniques. Further, an embodiment of the present disclosure is able to adapt to the topography of an area in which location service is desired. An embodiment of the present disclosure is also able to adapt to environmental changes substantially as frequently as desired. Thus, an embodiment of the present disclosure is able to take into account changes in the location topography over time without extensive manual data manipulation. Moreover, an embodiment of the present disclosure can be utilized with varying amounts of signal measurement inputs. Thus, if a location estimate is desired in a very short time interval (e.g., less than approximately one to two seconds), then the present location estimating system can be used with only as much signal measurement data as is possible to acquire during an initial portion of this time interval. Subsequently, after a greater amount of signal measurement data has been acquired, additional more accurate location estimates may be obtained. Note that this capability can be useful in the context of 911 emergency response in that a first quick coarse wireless mobile station location estimate can be used to route a 911 call from the mobile station to a 911 emergency response center that has responsibility for the area containing the mobile station and the 911 caller. Subsequently, once the 911 call has been routed according to this first quick location estimate, by continuing to receive additional wireless signal measurements, more reliable and accurate location estimates of the mobile station can be obtained.

Moreover, there are numerous additional advantages of the system of the present disclosure when applied in CDMA communication systems. The location system of the present disclosure readily benefits from the distinct advantages of the CDMA spread spectrum scheme, namely, these advantages include the exploitation of radio frequency spectral efficiency and isolation by (a) monitoring voice activity, (b) management of two-way power control, (c) provisioning of advanced variable-rate modems and error correcting signal encoding, (d) inherent resistance to fading, (e) enhanced privacy, and (f) multiple “rake” digital data receivers and searcher receivers for correlation of signal multipaths.

At a more general level, it is an aspect of the present disclosure to demonstrate the utilization of various novel computational paradigms such as:

(8.1) providing a multiple hypothesis computational architecture (as illustrated best in FIG. 8 and/or FIG. 13) wherein the hypotheses are:

(8.1.1) generated by modular independent hypothesizing computational models;

(8.1.2) the models are embedded in the computational architecture in a manner wherein the architecture allows for substantial amounts of application specific processing common or generic to a plurality of the models to be straightforwardly incorporated into the computational architecture;

(8.1.3) the computational architecture enhances the hypotheses generated by the models both according to past performance of the models and according to application specific constraints and heuristics without requiring feedback loops for adjusting the models;

(8.1.4) the models are relatively easily integrated into, modified and extracted from the computational architecture;

(8.2) providing a computational paradigm for enhancing an initial estimated solution to a problem by using this initial estimated solution as, effectively, a query or index into an historical data base of previous solution estimates and corresponding actual solutions for deriving an enhanced solution estimate based on past performance of the module that generated the initial estimated solution.

Note that the multiple hypothesis architecture provided herein is useful in implementing solutions in a wide range of applications. For example, the following additional applications are within the scope of the present disclosure:

(9.1) document scanning applications for transforming physical documents in to electronic forms of the documents. Note that in many cases the scanning of certain documents (books, publications, etc.) may have a 20% character recognition error rate. Thus, the novel computation architecture of the present disclosure can be utilized by (I) providing a plurality of document scanning models as the first order models, (ii) building a character recognition data base for archiving a correspondence between characteristics of actual printed character variations and the intended characters (according to, for example, font types), and additionally archiving a correspondence of performance of each of the models on previously encountered actual printed character variations (note, this is analogous to the Signature Data Base of the MS location application described herein), and (iii) determining any generic constraints and/or heuristics that are desirable to be satisfied by a plurality of the models. Accordingly, by comparing outputs from the first order document scanning models, a determination can be made as to whether further processing is desirable due to, for example, discrepancies between the output of the models. If further processing is desirable, then an embodiment of the multiple hypothesis architecture provided herein may be utilized to correct such discrepancies. Note that in comparing outputs from the first order document scanning models, these outputs may be compared at various granularities; e.g., character, sentence, paragraph or page; (9.2) diagnosis and monitoring applications such as medical diagnosis/monitoring, communication network diagnosis/monitoring; (9.3) robotics applications such as scene and/or object recognition; (9.4) seismic and/or geologic signal processing applications such as for locating oil and gas deposits; (9.5) Additionally, note that this architecture need not have all modules co-located. In particular, it is an additional aspect of an embodiment of the present disclosure that various modules can be remotely located from one another and communicate with one another via telecommunication transmissions such as telephony technologies and/or the Internet. Accordingly, such an embodiment of the present disclosure is particularly adaptable to such distributed computing environments. For example, some number of the first order models may reside in remote locations and communicate their generated hypotheses via the Internet.

For instance, in weather prediction applications it is not uncommon for computational models to require large amounts of computational resources. Thus, such models running at various remote computational facilities can transfer weather prediction hypotheses (e.g., the likely path of a hurricane) to a site that performs hypothesis adjustments according to: (i) past performance of the each model; (ii) particular constraints and/or heuristics, and subsequently outputs a most likely estimate for a particular weather condition.

In an alternative embodiment of the present disclosure, the processing following the generation of location hypotheses (each having an initial location estimate) by the first order models may be such that this processing can be provided on Internet user nodes and the first order models may reside at Internet server sites. In this configuration, an Internet user may request hypotheses from such remote first order models and perform the remaining processing at his/her node.

In other embodiments of the present disclosure, a fast, albeit less accurate location estimate may be initially performed for very time critical location applications where approximate location information may be required. For example, less than 1 second response for a mobile station location embodiment of the present disclosure may be desired for 911 emergency response location requests. Subsequently, once a relatively coarse location estimate has been provided, a more accurate most likely location estimate can be performed by repeating the location estimation processing a second time with, e.g., additional with measurements of wireless signals transmitted between a mobile station to be located and a network of base stations with which the mobile station is communicating, thus providing a second, more accurate location estimate of the mobile station.

Additionally, note that it is within the scope of the present disclosure to provide one or more central location development sites that may be networked to, for example, geographically dispersed location centers providing location services according to the present disclosure, wherein the FOMs may be accessed, substituted, enhanced or removed dynamically via network connections (via, e.g., the Internet) with a central location development site. Thus, a small but rapidly growing municipality in substantially flat low density area might initially be provided with access to, for example, two or three FOMs for generating location hypotheses in the municipality's relatively uncluttered radio signaling environment. However, as the population density increases and the radio signaling environment becomes cluttered by, for example, thermal noise and multipath, additional or alternative FOMs may be transferred via the network to the location center for the municipality.

Note that in some embodiments of the present disclosure, since there is a lack of sequencing between the FOMs and subsequent processing of location hypotheses, the FOMs can be incorporated into an expert system, if desired. For example, each FOM may be activated from an antecedent of an expert system rule. Thus, the antecedent for such a rule can evaluate to TRUE if the FOM outputs a location hypothesis, and the consequent portion of such a rule may put the output location hypothesis on a list of location hypotheses occurring in a particular time window for subsequent processing by the location center. Alternatively, activation of the FOMs may be in the consequents of such expert system rules. That is, the antecedent of such an expert system rule may determine if the conditions are appropriate for invoking the FOM(s) in the rule's consequent.

Of course, other software architectures may also to used in implementing the processing of the location center without departing from scope of the present disclosure. In particular, object-oriented architectures are also within the scope of the present disclosure. For example, the FOMs may be object methods on an MS location estimator object, wherein the estimator object receives substantially all target MS location signal data output by the signal filtering subsystem. Alternatively, software bus architectures are contemplated by the present disclosure, as one skilled in the art will understand, wherein the software architecture may be modular and facilitate parallel processing.

Further features and advantages of the present disclosure are provided by the accompanying figures, together with the detailed description, and the appendices provided hereinbelow.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 illustrates various perspectives of radio propagation opportunities which may be considered in addressing correlation with mobile to base station ranging.

FIG. 2 shows aspects of the two-ray radio propagation model and the effects of urban clutter.

FIG. 3 provides a typical example of how the statistical power budget is calculated in design of a Commercial Mobile Radio Service Provider (CMRS) network.

FIG. 4 illustrates an overall view of a wireless radio location network architecture, based on AIN principles.

FIG. 5 is a high level block diagram of an embodiment of the present disclosure for locating a mobile station (MS) within a radio coverage area for the embodiment.

FIG. 6 is a high level block diagram of the location center 142.

FIG. 7 is a high level block diagram of the hypothesis evaluator for the location center.

FIG. 8 is a substantially comprehensive high level block diagram illustrating data and control flows between the components of the location center, as well the functionality of the components.

FIGS. 9A and 9B is a high level data structure diagram describing the fields of a location hypothesis object generated by the first order models 1224 of the location center.

FIG. 10 is a graphical illustration of the computation performed by the most likelihood estimator 1344 of the hypothesis evaluator.

FIG. 11 is a high level block diagram of the mobile base station (MBS).

FIG. 12 is a high level state transition diagram describing computational states the Mobile Base station enters during operation.

FIG. 13 is a high level diagram illustrating the data structural organization of the Mobile Base station capability for autonomously determining a most likely MBS location from a plurality of potentially conflicting MBS location estimating sources.

FIG. 14 shows one method of modeling CDMA delay spread measurement ensembles and interfacing such signals to a typical artificial neural network based FOM.

FIG. 15 illustrates the nature of RF “Dead Zones”, notch area, and the importance of including location data signatures from the back side of radiating elements.

FIGS. 16 a through 16 c present a table providing a brief description of the attributes of the location signature data type stored in the location signature data base 1320.

FIGS. 17 a through 17 c present a high level flowchart of the steps performed by function, “UPDATELOC_SIG_DB,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIGS. 18 a through 18 b present a high level flowchart of the steps performed by function, “REDUCE_BAD_DB_LOC_SIGS,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIGS. 19 a through 19 b present a high level flowchart of the steps performed by function, “INCREASE_CONFIDENCE_OF_GOOD_DB_LOC_SIGS,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIGS. 20 a through 20 d present a high level flowchart of the steps performed by function, “DETERMINE_LOCATION_SIGNATURE_FIT_ERRORS,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIG. 21 presents a high level flowchart of the steps performed by function, “ESTIMATE_LOC_SIG_FROM_DB,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIGS. 22 a through 22 b present a high level flowchart of the steps performed by function, “GET_AREA_TO_SEARCH,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIGS. 23 a through 23 c present a high level flowchart of the steps performed by function, “GET_DIFFERENCE_MEASUREMENT,” for updating location signatures in the location signature data base 1320; note, this flowchart corresponds to the description of this function in APPENDIX C.

FIG. 24 is a high level illustration of context adjuster data structures and their relationship to the radio coverage area for the present invention;

FIGS. 25 a through 25 b present a high level flowchart of the steps performed by the function, “CONTEXT_ADJUSTER,” used in the context adjuster 1326 for adjusting mobile station estimates provided by the first order models 1224; this flowchart corresponds to the description of this function in APPENDIX D.

FIGS. 26 a through 26 c present a high level flowchart of the steps performed by the function, “GET_ADJUSTED_LOC_HYP_LIST_FOR,” used in the context adjuster 1326 for adjusting mobile station estimates provided by the first order models 1224; this flowchart corresponds to the description of this function in APPENDIX D.

FIGS. 27 a through 27 b present a high level flowchart of the steps performed by the function, “CONFIDENCE_ADJUSTER,” used in the context adjuster 1326 for adjusting mobile station estimates provided by the first order models 1224; this flowchart corresponds to the description of this function in APPENDIX D.

FIGS. 28 a and 28 b presents a high level flowchart of the steps performed by the function, “GET_COMPOSITE_PREDICTION_MAPPED_CLUSTER_DENSITY,” used in the context adjuster 1326 for adjusting mobile station estimates provided by the first order models 1224; this flowchart corresponds to the description of this function in APPENDIX D.

FIGS. 29 a through 29 h present a high level flowchart of the steps performed by the function, “GET_PREDICTION_MAPPED_CLUSTER_DENSITY_FOR,” used in the context adjuster 1326 for adjusting mobile station estimates provided by the first order models 1224; this flowchart corresponds to the description of this function in APPENDIX D.

FIG. 30 illustrates the primary components of the signal processing subsystem.

FIG. 31 illustrates how automatic provisioning of mobile station information from multiple CMRS occurs.

DETAILED DESCRIPTION (A) Detailed Description Introduction

Various digital wireless communication standards have been introduced such as Advanced Mobile Phone Service (AMPS), Narrowband Advanced Mobile Phone Service (NAMPS), code division multiple access (CDMA) and Time Division Multiple Access (TDMA) (e.g., Global Systems Mobile (GSM). These standards provide numerous enhancements for advancing the quality and communication capacity for wireless applications. Referring to CDMA, this standard is described in the Telephone Industries Association standard IS-95, for frequencies below 1 GHz, and in J-STD-008, the Wideband Spread-Spectrum Digital Cellular System Dual-Mode Mobile Station-Base station Compatibility Standard, for frequencies in the 1.8-1.9 GHz frequency bands. Additionally, CDMA general principles have been described, for example, in U.S. Pat. No. 5,109,390, Diversity Receiver in a CDMA Cellular Telephone System by Gilhousen. There are numerous advantages of such digital wireless technologies such as CDMA radio technology. For example, the CDMA spread spectrum scheme exploits radio frequency spectral efficiency and isolation by monitoring voice activity, managing two-way power control, provision of advanced variable-rate modems and error correcting signal design, and includes inherent resistance to fading, enhanced privacy, and provides for multiple “rake” digital data receivers and searcher receivers for correlation of multiple physical propagation paths, resembling maximum likelihood detection, as well as support for multiple base station communication with a mobile station, i.e., soft or softer hand-off capability. When coupled with a location center as described herein, substantial improvements in radio location can be achieved. For example, the CDMA spread spectrum scheme exploits radio frequency spectral efficiency and isolation by monitoring voice activity, managing two-way power control, provision of advanced variable-rate modems and error correcting signal design, and includes inherent resistance to fading, enhanced privacy, and provides for multiple “rake” digital data receivers and searcher receivers for correlation of multiple physical propagation paths, resembling maximum likelihood detection, as well as support for multiple base station communication with a mobile station, i.e., soft hand-off capability. Moreover, this same advanced radio communication infrastructure can also be used for enhanced radio location. As a further example, the capabilities of IS-41 and AIN already provide a broad-granularity of wireless location, as is necessary to, for example, properly direct a terminating call to an MS. Such information, originally intended for call processing usage, can be re-used in conjunction with the location center described herein to provide wireless location in the large (i.e., to determine which country, state and city a particular MS is located) and wireless location in the small (i.e., which location, plus or minus a few hundred feet within one or more base stations a given MS is located).

FIG. 4 is a high level diagram of a wireless radiolocation intelligent network architecture for an embodiment of the present disclosure. Accordingly, this figure illustrates the interconnections between the components, for example, of a wireless cellular communication network, such as, a typical PCS network configuration and various components that are specific to an embodiment of the present disclosure. In particular, as one skilled in the art will understand, a typical wireless (PCS) network includes:

-   -   (a) a (large) plurality of wireless mobile stations (MSs) 140         for at least one of voice related communication, visual (e.g.,         text such as is provided by a short message service) related         communication, and according to present invention, location         related communication;     -   (b) a mobile switching center (MSC) 112;     -   (c) a plurality of wireless cell sites in a radio coverage area         120, wherein each cell site includes an infrastructure base         station such as those labeled 122 (or variations thereof such as         122A-122D). In particular, the base stations 122 denote the         standard high traffic, fixed location base stations used for         voice and data communication with a plurality of MSs 140, and,         according to the present disclosure, also used for communication         of information related to locating such MSs 140. Additionally,         note that the base stations labeled 152 are more directly         related to wireless location enablement. For example, as         described in greater detail hereinbelow, the base stations 152         may be low cost, low functionality transponders that are used         primarily in communicating MS location related information to         the location center 142 (via base stations 122 and the MSC 112).         Note that unless stated otherwise, the base stations 152 will be         referred to hereinafter as “location base station(s) 152” or         simply LBS(s) 152;     -   (d) a public switched telephone network (PSTN) 124 (which may         include signaling system links 106 having network control         components such as: a service control point (SCP) 104, one or         more signaling transfer points (STPs) 110.

Added to this wireless network, the present invention provides the following additional components:

(10.1) a location center 142 which is required for determining a location of a target MS 140 using signal characteristic values for this target MS; (10.2) one or more mobile base stations 148 (MBS) which are optional, for physically traveling toward the target MS 140 or tracking the target MS; (10.3) a plurality of location base stations 152 (LBS) which are optional, distributed within the radio coverage areas 120, each LBS 152 having a relatively small MS 140 detection area 154;

Since location base stations 152 can be located on, e.g., each floor of a multi-story building, the wireless location technology described herein can be used to perform location in terms of height as well as by latitude and longitude.

In operation, an MS 140 may utilize one or more of the wireless technologies, CDMA, TDMA, AMPS, NAMPS or GSM for wireless communication with: (a) one or more infrastructure base stations 122, (b) mobile base station(s) 148, or (c) an LBS 152. Referring to FIG. 4 again, additional detail is provided of typical base station coverage areas, sectorization, and high level components within a radio coverage area 120, including the MSC 112. Although base stations may be placed in any configuration, a typical deployment configuration is approximately in a cellular honeycomb pattern, although many practical tradeoffs exist, such as site availability, versus the requirement for maximal terrain coverage area. To illustrate, three such exemplary base stations (BSs) are 122A, 122B and 122C, each of which radiate referencing signals within their area of coverage 169 to facilitate mobile station (MS) 140 radio frequency connectivity, and various timing and synchronization functions. Note that some base stations may contain no sectors 130 (e.g. 122E), thus radiating and receiving signals in a 360 degree omnidirectional coverage area pattern, or the base station may contain “smart antennas” which have specialized coverage area patterns. However, the generally most frequent base stations 122 have three sector 130 coverage area patterns. For example, base station 122A includes sectors 130, additionally labeled a, b and c. Accordingly, each of the sectors 130 radiate and receive signals in an approximate 120 degree arc, from an overhead view. As one skilled in the art will understand, actual base station coverage areas 169 (stylistically represented by hexagons about the base stations 122) generally are designed to overlap to some extent, thus ensuring seamless coverage in a geographical area. Control electronics within each base station 122 are used to communicate with a mobile stations 140. Information regarding the coverage area for each sector 130, such as its range, area, and “holes” or areas of no coverage (within the radio coverage area 120), may be known and used by the location center 142 to facilitate location determination. Further, during communication with a mobile station 140, the identification of each base station 122 communicating with the MS 140 as well, as any sector identification information, may be known and provided to the location center 142.

In the case of the base station types 122, 148, and 152 communicating location information, a base station or mobility controller 174 (BSC) controls, processes and provides an interface between originating and terminating telephone calls from/to mobile station (MS) 140, and the mobile switch center (MSC) 112. The MSC 122, on-the-other-hand, performs various administration functions such as mobile station 140 registration, authentication and the relaying of various system parameters, as one skilled in the art will understand.

The base stations 122 may be coupled by various transport facilities 176 such as leased lines, frame relay, T-Carrier links, optical fiber links or by microwave communication links.

When an MS 140 (such as a CDMA, AMPS, NAMPS mobile telephone) is powered on and in the idle state, it constantly monitors the pilot signal transmissions from each of the base stations 122 located at nearby cell sites. Since base station/sector coverage areas may often overlap, such overlapping enables an MS 140 to detect, and, in the case of certain wireless technologies, communicate simultaneously along both the forward and reverse paths, with multiple base stations 122 and/or sectors 130. In FIG. 4 the constantly radiating pilot signals from base station sectors 130, such as sectors a, b and c of BS 122A, are detectable by MSs 140 within the coverage area 169 for BS 122A. That is, such a mobile station 140 can scan for pilot channels, corresponding to given base station/sector identifiers (IDs), for determining which coverage area 169 (i.e., cell) the mobile station is contained. This is performed by comparing signal strengths of pilot signals transmitted from these particular cell-sites.

The mobile station 140 then initiates a registration request with the MSC 112, via the base station controller 174. The MSC 112 determines whether or not the mobile station 140 is allowed to proceed with the registration process (except, e.g., in the case of a 911 call, wherein no registration process is required). Once any required registration is complete, calls may be originated from the mobile station 140 or calls or short message service messages can be received from the network. Note that the MSC 112 communicates as appropriate, with a class 4/5 wireline telephony circuit switch or other central offices, connected to the PSTN 124 network. Such central offices connect to wireline terminals, such as telephones, or any communication device compatible with a wireline. The PSTN 124 may also provide connections to long distance networks and other networks.

The MSC 112 may also utilize IS/41 data circuits or trunks connecting to signal transfer point 110, which in turn connects to a service control point 104, via Signaling System #7 (SS7) signaling links (e.g., trunks) for intelligent call processing, as one skilled in the art will understand. In the case of wireless AIN services such links are used for call routing instructions of calls interacting with the MSC 112 or any switch capable of providing service switching point functions, and the public switched telephone network (PSTN) 124, with possible termination back to the wireless network.

Still referring to FIG. 4, the location center/gateway (LC) 142 interfaces with the MSC 112 either via dedicated transport facilities 178, using, e.g., any number of LAN/WAN technologies, such as Ethernet, fast Ethernet, frame relay, virtual private networks, etc., or via the PSTN 124. The LC 142 may receive autonomous (e.g., unsolicited) command/response messages regarding, for example: (a) the state of the wireless network of each service provider utilizing the LC 142 for wireless location services, (b) MS 140 and BS 122 radio frequency (RF) measurements, (c) communications with any MBSs 148, and (d) location applications requesting MS locations using the location center/gateway 142. Conversely, the LC 142 may provide data and control information to each of the above components in (a)-(d). Additionally, the LC 142 may provide location information to an MS 140, via a BS 122. Moreover, in the case of the use of a mobile base station (MBS) 148, several communications paths may exist with the LC 142.

The MBS 148 may act as a low cost, partially-functional, moving base station, and is, in one embodiment, situated in a vehicle where an operator may engage in MS 140 searching and tracking activities. In providing these activities using CDMA, the MBS 148 provides a forward link pilot channel for a target MS 140, and subsequently receives unique BS pilot strength measurements from the MS 140. The MBS 148 also includes a mobile station 140 for data communication with the LC 142, via a BS 122. In particular, such data communication includes telemetering at least the geographic position (or estimates thereof) of the MBS 148, as well as various RF measurements related to signals received from the target MS 140, and in some embodiments, MBS 148 estimates of the location of the target MS 140. In some embodiments, the MBS 148 may utilize multiple-beam fixed antenna array elements and/or a moveable narrow beam antenna, such as a microwave dish 182. The antennas for such embodiments may have a known orientation in order to further deduce a radio location of the target MS 140 with respect to an estimated current location of the MBS 148. As will be described in more detail herein below, the MBS 148 may further contain a global positioning system (GPS), distance sensors, deadreckoning electronics, as well as an on-board computing system and display devices for locating both the MBS 148 itself as well as tracking and locating the target MS 140. The computing and display provides a means for communicating the position of the target MS 140 on a map display to an operator of the MBS 148.

Each location base station (LBS) 152 is a low cost location device. Each such LBS 152 communicates with one or more of the infrastructure base stations 122 using one or more wireless technology interface standards. In some embodiments, to provide such LBS's cost effectively, each LBS 152 only partially or minimally supports the air-interface standards of the one or more wireless technologies used in communicating with both the BSs 122 and the MSs 140. Each LBS 152, when put in service, is placed at a fixed location, such as at a traffic signal, lamp post, etc., and wherein the location of the LBS may be determined as accurately as, for example, the accuracy of the locations of the infrastructure BSs 122. Assuming the wireless technology CDMA is used, each BS 122 uses a time offset of the pilot PN sequence to identify a forward CDMA pilot channel. In one embodiment, each LBS 152 emits a unique, time-offset pilot PN sequence channel in accordance with the CDMA standard in the RF spectrum designated for BSs 122, such that the channel does not interfere with neighboring BSs 122 cell site channels, nor would it interfere with neighboring LBSs 152. However, as one skilled in the art will understand, time offsets, in CDMA chip sizes, may be re-used within a PCS system, thus providing efficient use of pilot time offset chips, thereby achieving spectrum efficiency. Each LBS 152 may also contain multiple wireless receivers in order to monitor transmissions from a target MS 140. Additionally, each LBS 152 contains mobile station 140 electronics, thereby allowing the LBS to both be controlled by the LC 142, and to transmit information to the LC 142, via at least one neighboring BS 122.

As mentioned above, when the location of a particular target MS 140 is desired, the LC 142 can request location information about the target MS 140 from, for instance, one or more activated LBSs 152 in a geographical area of interest. Accordingly, whenever the target MS 140 is in such an area, or is suspected of being in the area, either upon command from the LC 142, or in a substantially continuous fashion, the LBS's pilot channel appears to the target MS 140 as a potential neighboring base station channel, and consequently, is placed, for example, in the CDMA neighboring set, or the CDMA remaining set, of the target MS 140 (as one familiar with the CDMA standards will understand).

During the normal CDMA pilot search sequence of the mobile station initialization state (in the target MS), the target MS 140 will, if within range of such an activated LBS 152, detect the LBS pilot presence during the CDMA pilot channel acquisition substrate. Consequently, the target MS 140 performs RF measurements on the signal from each detected LBS 152. Similarly, an activated LBS 152 can perform RF measurements on the wireless signals from the target MS 140. Accordingly, each LBS 152 detecting the target MS 140 may subsequently telemeter back to the LC 142 measurement results related to signals from/to the target MS 140. Moreover, upon command, the target MS 140 will telemeter back to the LC 142 its own measurements of the detected LBSs 152, and consequently, this new location information, in conjunction with location related information received from the BSs 122, can be used to locate the target MS 140.

It should be noted that an LBS 152 will normally deny hand-off requests, since typically the LBS does not require the added complexity of handling voice or traffic bearer channels, although economics and peak traffic load conditions would dictate preference here. Note that GPS timing information, needed by any CDMA base station, is either achieved via a the inclusion of a local GPS receiver or via a telemetry process from a neighboring conventional BS 122, which contains a GPS receiver and timing information. Since energy requirements are minimal in such an LBS 152, (rechargeable) batteries or solar cells may be used to power the LBSs. Further, no expensive terrestrial transport link is typically required since two-way communication is provided by an included MS 140 (or an electronic variation thereof) within each LBS. Thus, LBSs 152 may be placed in numerous locations, such as:

-   -   (a) in dense urban canyon areas (e.g., where signal reception         may be poor and/or very noisy);     -   (b) in remote areas (e.g., hiking, camping and skiing areas);     -   (c) along highways (e.g., for emergency as well as monitoring         traffic flow), and their rest stations; or     -   (d) in general, wherever more location precision is required         than is obtainable using other wireless infrastructure network         components.

(B) Location Center—Network Elements API Description

A location application programming interface or L-API 14 (see FIG. 30, and including L-API-Loc_APP 135, L-API-MSC 136, and L-API-SCP 137 shown in FIG. 4), may be provided between the location center/gateway 142 (LC) and the mobile switch center (MSC) network element type, in order to send and receive various control, signals and data messages. The L-API 14 should be implemented using a preferably high-capacity physical layer communications interface, such as IEEE standard 802.3 (10 baseT Ethernet), although other physical layer interfaces could be used, such as fiber optic ATM, frame relay, etc. At least two forms of L-API implementation are possible. In a first case, the signal control and data messages are provided using the MSC 112 vendor's native operations messages inherent in the product offering, without any special modifications. In a second case the L-API includes a full suite of commands and messaging content specifically optimized for wireless location purposes, which may require some, although minor development on the part of an MSC vendor.

(C) Signal Processor Description

Referring to FIG. 30, the signal processing subsystem 1220, such a signal processing subsystem may: (a) receive control messages and signal measurements from one or more wireless service provider networks, and (b) transmit appropriate control messages to such wireless networks via the location applications programming interface 14 referenced earlier, for wireless location purposes. The signal processing subsystem 1220 additionally provides various signal identification, conditioning and pre-processing functions, including buffering, signal type classification, signal filtering, message control and routing functions to the location estimating modules or FOMs.

There can be several combinations of Delay Spread/Signal Strength sets of measurements made available to the signal processing subsystem 1220. In some cases a mobile station 140 (FIG. 4) may be able to detect up to three or four pilot channels representing three to four base stations, or as few as one pilot channel, depending upon the environment and wireless network configuration. Similarly, possibly more than one BS 122 can detect a mobile station 140 transmitter signal, as evidenced by the provision of cell diversity or soft hand-off in the CDMA standards, and the fact that multiple CMRS' base station equipment commonly will overlap coverage areas.

For each mobile station 140 or BS 122 transmitted signal detected by a receiver group at a station, multiple delayed signals, or “fingers” may be detected and tracked resulting from multipath radio propagation conditions, from a given transmitter.

In typical spread spectrum diversity CDMA receiver design, the “first” finger represents the most direct, or least delayed multipath signal. Second or possibly third or fourth fingers may also be detected and tracked, assuming the mobile station contains a sufficient number of data receivers. Although traditional TOA and TDOA methods would discard subsequent fingers related to the same transmitted finger, collection and use of these additional values can prove useful to reduce location ambiguity, and are thus collected by the Signal Processing subsystem in the Location Center 142.

From the mobile receiver's perspective, a number of combinations of measurements could be made available to the Location Center. Due to the disperse and near-random nature of CDMA radio signals and propagation characteristics, traditional TOA/TDOA location methods have failed in the past, because the number of signals received in different locations are different. In a particularly small urban area, of say less than 500 square feet, the number of RF signals and their multipath components may vary by over 100 percent.

Due to the large capital outlay costs associated with providing three or more overlapping base station coverage signals in every possible location, most practical digital PCS deployments result in fewer than three base station pilot channels being reportable in the majority of location areas, thus resulting in a larger, more amorphous location estimate. This consequence requires a family of location estimate location modules, each firing whenever suitable data has been presented to a model, thus providing a location estimate to a backend subsystem which resolves ambiguities.

In one embodiment of this invention using backend hypothesis resolution, by utilizing existing knowledge concerning base station coverage area boundaries (such as via the compilation a RF coverage database—either via RF coverage area simulations or field tests), the location error space is decreased. Negative logic Venn diagrams can be generated which deductively rule out certain location estimate hypotheses.

Although the forward link mobile station's received relative signal strength (RRSS_(BS)) of detected nearby base station transmitter signals can be used directly by the location estimate modules, the CDMA base station's reverse link received relative signal strength (RRSS_(MS)) of the detected mobile station transmitter signal must be modified prior to location estimate model use, since the mobile station transmitter power level changes nearly continuously, and would thus render relative signal strength useless for location purposes.

One adjustment variable and one factor value are required by the signal processing subsystem in the CDMA air interface case: (1) instantaneous relative power level in dBm (IRPL) of the mobile station transmitter, and (2) the mobile station Power Class. By adding the IRPL to the RRSS_(MS), a synthetic relative signal strength (SRSS_(MS)) of the mobile station 140 signal detected at the BS 122 is derived, which can be used by location estimate model analysis, as shown below:

SRSS _(MS) =RRSS _(MS) +IRPL (in dBm).

Accordingly, SRSS_(MS) is a corrected indication of the effective path loss in the reverse direction (mobile station to BS), and therefore is now comparable with RRSS_(BS) and can be used to provide a correlation with either distance or shadow fading because it now accounts for the change of the mobile station transmitter's power level. Note that the two signal measurements RRSS_(BS) and SRSS_(MS) can now be processed in a variety of ways to achieve a more robust correlation with distance or shadow fading.

Although Rayleigh fading appears as a generally random noise generator, essentially destroying the correlation value of either RRSS_(BS) or SRSS_(MS) measurements with distance individually, several mathematical operations or signal processing functions can be performed on each measurement to derive a more robust relative signal strength value, overcoming the adverse Rayleigh fading effects. Examples include averaging, taking the strongest value and weighting the strongest value with a greater coefficient than the weaker value, then averaging the results. This signal processing technique takes advantage of the fact that although a Rayleigh fade may often exist in either the forward or reverse path, it is much less probable that a Rayleigh fade also exists in the reverse or forward path, respectively. A shadow fade however, similarly affects the signal strength in both paths.

At this point a CDMA radio signal direction independent of “net relative signal strength measurement” can be derived which can be used to establish a correlation with either distance or shadow fading, or both. Although the ambiguity of either shadow fading or distance cannot be determined, other means can be used in conjunction, such as the fingers of the CDMA delay spread measurement, and any other TOA/TDOA calculations from other geographical points. In the case of a mobile station with a certain amount of shadow fading between its BS 122 (FIG. 2), the first finger of a CDMA delay spread signal is most likely to be a relatively shorter duration than the case where the mobile station 140 and BS 122 are separated by a greater distance, since shadow fading does not materially affect the arrival time delay of the radio signal.

By performing a small modification in the control electronics of the CDMA base station and mobile station receiver circuitry, it is possible to provide the signal processing subsystem 1220 (reference FIG. 30) within the location center 142 (FIG. 1) with data that exceed the one-to-one CDMA delay-spread fingers to data receiver correspondence. Such additional information, in the form of additional CDMA fingers (additional multipath) and all associated detectable pilot channels, provides new information which is used to enhance the accuracy of the location center's location estimate location estimate modules.

This enhanced capability is provided via a control message, sent from the location center 142 to the mobile switch center 12, and then to the base station(s) in communication with, or in close proximity with, mobile stations 140 to be located. Two types of location measurement request control messages are needed: one to instruct a target mobile station 140 (i.e., the mobile station to be located) to telemeter its BS pilot channel measurements back to the primary BS 122 and from there to the mobile switch center 112 and then to the location system 42. The second control message is sent from the location system 42 to the mobile switch center 112, then to first the primary BS, instructing the primary BS's searcher receiver to output (i.e., return to the initiating request message source) the detected target mobile station 140 transmitter CDMA pilot channel offset signal and their corresponding delay spread finger (peak) values and related relative signal strengths.

The control messages are implemented in standard mobile station 140 and BS 122 CDMA receivers such that all data results from the search receiver and multiplexed results from the associated data receivers are available for transmission back to the location center 142. Appropriate value ranges are required regarding mobile station 140 parameters T_ADD_(s), T_DROP_(s), and the ranges and values for the Active, Neighboring and Remaining Pilot sets registers, held within the mobile station 140 memory. Further mobile station 140 receiver details have been discussed above.

In the normal case without any specific multiplexing means to provide location measurements, exactly how many CDMA pilot channels and delay spread fingers can or should be measured vary according to the number of data receivers contained in each mobile station 140. As a guide, it is preferred that whenever RF characteristics permit, at least three pilot channels and the strongest first three fingers, are collected and processed. From the BS 122 perspective, it is preferred that the strongest first four CDMA delay spread fingers and the mobile station power level be collected and sent to the location system 42, for each of preferably three BSs 122 which can detect the mobile station 140. A much larger combination of measurements is potentially feasible using the extended data collection capability of the CDMA receivers.

FIG. 30 illustrates the components of the Signal Processing Subsystem 1220 (also shown in FIGS. 5, 6 and 8). The main components consist of the input queue(s) 7, signal classifier/filter 9, digital signaling processor 17, imaging filters 19, output queue(s) 21, router/distributor 23 (also denoted as the “Data Capture And Gateway” in FIG. 8(2)), a signal processor database 26 and a signal processing controller 15.

Input queues 7 are required in order to stage the rapid acceptance of a significant amount of RF signal measurement data, used for either location estimate purposes or to accept autonomous location data. Each location request using fixed base stations may, in one embodiment, contain from 1 to 128 radio frequency measurements from the mobile station, which translates to approximately 61.44 kilobytes of signal measurement data to be collected within 10 seconds and 128 measurements from each of possibly four base stations, or 245.76 kilobytes for all base stations, for a total of approximately 640 signal measurements from the five sources, or 307.2 kilobytes to arrive per mobile station location request in 10 seconds. An input queue storage space is assigned at the moment a location request begins, in order to establish a formatted data structure in persistent store. Depending upon the urgency of the time required to render a location estimate, fewer or more signal measurement samples can be taken and stored in the input queue(s) 7 accordingly.

The signal processing subsystem 1220 supports a variety of wireless network signaling measurement capabilities by detecting the capabilities of the mobile and base station through messaging structures provided by the location application programming interface (L-API 14, FIG. 30). Detection is accomplished in the signal classifier 9 (FIG. 30) by referencing a mobile station database table within the signal processor database 26, which provides, given a mobile station identification number, mobile station revision code, other mobile station characteristics. Similarly, a mobile switch center table 31 provides MSC characteristics and identifications to the signal classifier/filter 9. The signal classifier/filter adds additional message header information that further classifies the measurement data which allows the digital signal processor and image filter components to select the proper internal processing subcomponents to perform operations on the signal measurement data, for use by the location estimate modules.

Regarding service control point messages (of L-API-SCP interface 137, FIG. 4) autonomously received from the input queue 7 (FIGS. 30 and 31), the signal classifier/filter 9 determines, via a signal processing database 26 query, whether such a message is to be associated with a home base station module. Thus appropriate header information is added to the message, thus enabling the message to pass through the digital signal processor 17 unaffected to the output queue 21, and then to the router/distributor 23. The router/distributor 23 then routes the message to the HBS first order model. Those skilled in the art will understand that associating location requests from Home Base Station configurations require substantially less data: the mobile identification number and the associated wireline telephone number transmission from the home location register are on the order of less than 32 bytes. Consequentially the home base station message type could be routed without any digital signal processing.

Output queue(s) 21 (FIG. 30) are required for similar reasons as input queues 7: relatively large amounts of data must be held in a specific format for further location processing by the location estimate modules 1224.

The router and distributor component 23 (FIG. 30) is responsible for directing specific signal measurement data types and structures to their appropriate modules. For example, the HBS FOM has no use for digital filtering structures, whereas the TDOA module would not be able to process an HBS response message.

The controller 15 (FIG. 30) is responsible for staging the movement of data among the signal processing subsystem 1220 components input queue 7, digital signal processor 17, router/distributor 23 and the output queue 21, and to initiate signal measurements within the wireless network, in response from an Internet 468 location request message in FIG. 5, via the location application programming interface.

In addition the controller 15 receives autonomous messages from the MSC, via the location applications programming interface or L-API 14 (FIG. 30) and the input queue 7, whenever a 9-1-1 wireless call is originated. The mobile switch center provides this autonomous notification to the location system as follows: by specifying the appropriate mobile switch center operations and maintenance commands to surveil calls based on certain digits dialed such as 9-1-1, the location applications programming interface 14, in communications with the MSCs, receives an autonomous notification whenever a mobile station user dials 9-1-1. Specifically, a bi-directional authorized communications port is configured, usually at the operations and maintenance subsystem of the MSCs, or with their associated network element manager system(s), with a data circuit, such as a DS-1, with the location applications programming interface 14. Next, the “call trace” capability of the mobile switch center is activated for the respective communications port. The exact implementation of the vendor-specific man-machine or Open Systems Interface (OSI) command(s) and their associated data structures generally vary among MSC vendors, however the trace function is generally available in various forms, and is required in order to comply with Federal Bureau of Investigation authorities for wire tap purposes. After the appropriate surveillance commands are established on the MSC, such 9-1-1 call notifications messages containing the mobile station identification number (MIN) and, in U.S. FCC phase 1 E9-1-1 implementations, a pseudo-automatic number identification (a.k.a. pANI) which provides an association with the primary base station in which the 9-1-1 caller is in communication. In cases where the pANI is known from the onset, the signal processing subsystem 1220 avoids querying the MSC in question to determine the primary base station identification associated with the 9-1-1 mobile station caller.

After the signal processing controller 15 receives the first message type, the autonomous notification message from the mobile switch center 112 to the location system 142, containing the mobile identification number and optionally the primary base station identification, the controller 15 queries the base station table 13 (FIG. 30) in the signal processor database 26 to determine the status and availability of any neighboring base stations, including those base stations of other CMRS in the area. The definition of neighboring base stations include not only those within a provisionable “hop” based on the cell design reuse factor, but also includes, in the case of CDMA, results from remaining set information autonomously queried to mobile stations, with results stored in the base station table. Remaining set information indicates that mobile stations can detect other base station (sector) pilot channels which may exceed the “hop” distance, yet are nevertheless candidate base stations (or sectors) for wireless location purposes. Although cellular and digital cell design may vary, “hop” distance is usually one or two cell coverage areas away from the primary base station's cell coverage area.

Having determined a likely set of base stations which may both detect the mobile station's transmitter signal, as well as to determine the set of likely pilot channels (i.e., base stations and their associated physical antenna sectors) detectable by the mobile station in the area surrounding the primary base station (sector), the controller 15 initiates messages to both the mobile station and appropriate base stations (sectors) to perform signal measurements and to return the results of such measurements to the signal processing system regarding the mobile station to be located. This step may be accomplished via several interface means. In a first case the controller 15 utilizes, for a given MSC, predetermined storage information in the MSC table 31 to determine which type of commands, such as man-machine or OSI commands are needed to request such signal measurements for a given MSC. The controller generates the mobile and base station signal measurement commands appropriate for the MSC and passes the commands via the input queue 7 and the locations application programming interface 14 in FIG. 30, to the appropriate MSC, using the authorized communications port mentioned earlier. In a second case, the controller 15 communicates directly with base stations within having to interface directly with the MSC for signal measurement extraction.

Upon receipt of the signal measurements, the signal classifier 9 in FIG. 30 examines location application programming interface-provided message header information from the source of the location measurement (for example, from a fixed BS 122, a mobile station 140, a distributed antenna system 168 in FIG. 4 or message location data related to a home base station), provided by the location applications programming interface (L-API 14) via the input queue 7 in FIG. 30 and determines whether or not device filters 17 or image filters 19 are needed, and assesses a relative priority in processing, such as an emergency versus a background location task, in terms of grouping like data associated with a given location request. In the case where multiple signal measurement requests are outstanding for various base stations, some of which may be associated with a different CMRS network, and additional signal classifier function includes sorting and associating the appropriate incoming signal measurements together such that the digital signal processor 17 processes related measurements in order to build ensemble data sets. Such ensembles allow for a variety of functions such as averaging, outlier removal over a time period, and related filtering functions, and further prevent association errors from occurring in location estimate processing.

Another function of the signal classifier/low pass filter component 9 is to filter information that is not useable, or information that could introduce noise or the effect of noise in the location estimate modules. Consequently low pass matching filters are used to match the in-common signal processing components to the characteristics of the incoming signals. Low pass filters match: Mobile Station, base station, CMRS and MSC characteristics, as well as to classify Home Base Station messages.

The signal processing subsystem 1220 contains a base station database table 13 (FIG. 30) which captures the maximum number of CDMA delay spread fingers for a given base station.

The base station identification code, or CLLI or common language level identification code is useful in identifying or relating a human-labeled name descriptor to the Base Station. Latitude, Longitude and elevation values are used by other subsystems in the location system for calibration and estimation purposes. As base stations and/or receiver characteristics are added, deleted, or changed with respect to the network used for location purposes, this database table must be modified to reflect the current network configuration.

Just as an upgraded base station may detect additional CDMA delay spread signals, newer or modified mobile stations may detect additional pilot channels or CDMA delay spread fingers. Additionally different makes and models of mobile stations may acquire improved receiver sensitivities, suggesting a greater coverage capability. A table may establish the relationships among various mobile station equipment suppliers and certain technical data relevant to this location invention.

Although not strictly necessary, the MIN can be populated in this table from the PCS Service Provider's Customer Care system during subscriber activation and fulfillment, and could be changed at deactivation, or anytime the end-user changes mobile stations. Alternatively, since the MIN, manufacturer, model number, and software revision level information is available during a telephone call, this information could extracted during the call, and the remaining fields populated dynamically, based on manufacturer's' specifications information previously stored in the signal processing subsystem 1220. Default values are used in cases where the MIN is not found, or where certain information must be estimated.

A low pass mobile station filter, contained within the signal classifier/low pass filter 9 of the signal processing subsystem 1220, uses the above table data to perform the following functions: 1) act as a low pass filter to adjust the nominal assumptions related to the maximum number of CDMA fingers, pilots detectable; and 2) to determine the transmit power class and the receiver thermal noise floor. Given the detected reverse path signal strength, the required value of SRSS_(MS), a corrected indication of the effective path loss in the reverse direction (mobile station to BS), can be calculated based on data contained within the mobile station table 11, stored in the signal processing database 26.

The effects of the maximum number of CDMA fingers allowed and the maximum number of pilot channels allowed essentially form a low pass filter effect, wherein the least common denominator of characteristics are used to filter the incoming RF signal measurements such that a one for one matching occurs. The effect of the transmit power class and receiver thermal noise floor values is to normalize the characteristics of the incoming RF signals with respect to those RF signals used.

The signal classifier/filter 9 (FIG. 30) is in communication with both the input queue 7 and the signal processing database 26. In the early stage of a location request the signal processing subsystem 1220 shown in, e.g., FIGS. 5, 30 and 31, will receive the initiating location request from either an autonomous 911 notification message from a given MSC, or from a location application, for which mobile station characteristics about the target mobile station 140 (FIG. 4) is required. Referring to FIG. 30, a query is made from the signal processing controller 15 to the signal processing database 26, specifically the mobile station table 11, to determine if the mobile station characteristics associated with the MIN to be located is available in table 11. If the data exists then there is no need for the controller 15 to query the wireless network in order to determine the mobile station characteristics, thus avoiding additional real-time processing which would otherwise be required across the air interface, in order to determine the mobile station MIN characteristics. The resulting mobile station information my be provided either via the signal processing database 26 or alternatively a query may be performed directly from the signal processing subsystem 1220 to the MSC in order to determine the mobile station characteristics.

Referring now to FIG. 31, another location application programming interface, L-API-CCS 239 to the appropriate CMRS customer care system provides the mechanism to populate and update the mobile station table 11 within the database 26. The L-API-CCS 239 contains its own set of separate input and output queues or similar implementations and security controls to ensure that provisioning data is not sent to the incorrect CMRS, and that a given CMRS cannot access any other CMRS' data. The interface 1155 a to the customer care system for CMRS-A 1150 a provides an autonomous or periodic notification and response application layer protocol type, consisting of add, delete, change and verify message functions in order to update the mobile station table 11 within the signal processing database 26, via the controller 15. A similar interface 155 b is used to enable provisioning updates to be received from CMRS-B customer care system 1150 b.

Although the L-API-CCS application message set may be any protocol type which supports the autonomous notification message with positive acknowledgment type, the T1M1.5 group within the American National Standards Institute has defined a good starting point in which the L-API-CCS 239 could be implemented, using the robust OSI TMN X-interface at the service management layer. The object model defined in Standards proposal number T1M1.5/96-22R9, Operations Administration, Maintenance, and Provisioning (OAM&P)—Model for Interface Across Jurisdictional Boundaries to Support Electronic Access Service Ordering: Inquiry Function, can be extended to support the L-API-CCS information elements as required and further discussed below. Other choices in which the L-API-CCS application message set may be implemented include ASCII, binary, or any encrypted message set encoding using the Internet protocols, such as TCP/IP, simple network management protocol, http, https, and email protocols.

Referring to the digital signal processor (DSP) 17, in communication with the signal classifier/LP filter 9, the DSP 17 provides a time series expansion method to convert non-HBS data from a format of an signal measure data ensemble of time-series based radio frequency data measurements, collected as discrete time-slice samples, to a three dimensional matrix location data value image representation. Other techniques further filter the resultant image in order to furnish a less noisy training and actual data sample to the location estimate modules.

After 128 samples (in one embodiment) of data are collected of the delay spread-relative signal strength RF data measurement sample, mobile station RX for BS-1 are grouped into a quantization matrix, where rows constitute relative signal strength intervals and columns define delay intervals. Each measurement row, column pair (which could be represented as a complex number or Cartesian point pair) is added to their respective values to generate a Z direction of frequency of recurring measurement value pairs or a density recurrence function. By next applying a grid function to each x, y, and z value, a three-dimensional surface grid is generated, which represents a location data value or unique print of that 128-sample measurement.

In the general case where a mobile station is located in an environment with varied clutter patterns, such as terrain undulations, unique man-made structure geometries (thus creating varied multipath signal behaviors), such as a city or suburb, although the first CDMA delay spread finger may be the same value for a fixed distance between the mobile station and BS antennas, as the mobile station moves across such an area, different finger-data are measured. In the right image for the defined BS antenna sector, location classes, or squares numbered one through seven, are shown across a particular range of line of position (LOP).

A traditional TOA/TDOA ranging method between a given BS and mobile station only provides a range along an arc, thus introducing ambiguity error. However a unique three dimensional image can be used in this method to specifically identify, with recurring probability, a particular unique location class along the same Line Of Position, as long as the multipath is unique by position but generally repeatable, thus establishing a method of not only ranging, but also of complete latitude, longitude location estimation in a Cartesian space. In other words, the unique shape of the “mountain image” enables a correspondence to a given unique location class along a line of position, thereby eliminating traditional ambiguity error.

Although man-made external sources of interference, Rayleigh fades, adjacent and co-channel interference, and variable clutter, such as moving traffic introduce unpredictability (thus no “mountain image” would ever be exactly alike), three basic types of filtering methods can be used to reduce matching/comparison error from a training case to a location request case: (1) select only the strongest signals from the forward path (BS to mobile station) and reverse path (mobile station to BS), (2) convolute the forward path 128 sample image with the reverse path 128 sample image, and (3) process all image samples through various digital image filters to discard noise components.

In one embodiment, convolution of forward and reverse images is performed to drive out noise. This is one embodiment that essentially nulls noise completely, even if strong and recurring, as long as that same noise characteristic does not occur in the opposite path.

The third embodiment or technique of processing CDMA delay spread profile images through various digital image filters, provides a resultant “image enhancement” in the sense of providing a more stable pattern recognition paradigm to the neural net location estimate model. For example, image histogram equalization can be used to rearrange the images' intensity values, or density recurrence values, so that the image's cumulative histogram is approximately linear.

Other methods which can be used to compensate for a concentrated histogram include: (1) Input Cropping,

(2) Output Cropping and (3) Gamma Correction. Equalization and input cropping can provide particularly striking benefits to a CDMA delay spread profile image. Input cropping removes a large percentage of random signal characteristics that are non-recurring.

Other filters and/or filter combinations can be used to help distinguish between stationary and variable clutter affecting multipath signals. For example, it is desirable to reject multipath fingers associated with variable clutter, since over a period of a few minutes such fingers would not likely recur. Further filtering can be used to remove recurring (at least during the sample period), and possibly strong but narrow “pencils” of RF energy. A narrow pencil image component could be represented by a near perfect reflective surface, such as a nearby metal panel truck stopped at a traffic light.

On the other hand, stationary clutter objects, such as concrete and glass building surfaces, adsorb some radiation before continuing with a reflected ray at some delay. Such stationary clutter-affected CDMA fingers are more likely to pass a 4×4 neighbor Median filter as well as a 40 to 50 percent Input Crop filter, and are thus more suited to neural net pattern recognition. However when subjected to a 4×4 neighbor Median filter and 40 percent clipping, pencil-shaped fingers are deleted. Other combinations include, for example, a 50 percent cropping and 4×4 neighbor median filtering. Other filtering methods include custom linear filtering, adaptive (Weiner) filtering, and custom nonlinear filtering.

The DSP 17 may provide data ensemble results, such as extracting the shortest time delay with a detectable relative signal strength, to the router/distributor 23, or alternatively results may be processed via one or more image filters 19, with subsequent transmission to the router/distributor 23. The router/distributor 23 examines the processed message data from the DSP 17 and stores routing and distribution information in the message header. The router/distributor 23 then forwards the data messages to the output queue 21, for subsequent queuing then transmission to the appropriate location estimator FOMs.

(D) Location Center High Level Functionality

At a very high level the location center 142 computes location estimates for a wireless Mobile Station 140 (denoted the “target MS” or “MS”) by performing the following steps:

(23.1) receiving signal transmission characteristics of communications communicated between the target MS 140 and one or more wireless infrastructure base stations 122; (23.2) filtering the received signal transmission characteristics (by a signal processing subsystem 1220 illustrated in FIG. 5) as needed so that target MS location data can be generated that is uniform and consistent with location data generated from other target MSs 140. In particular, such uniformity and consistency is both in terms of data structures and interpretation of signal characteristic values provided by the MS location data; (23.3) inputting the generated target MS location data to one or more MS location estimating models (denoted First order models or FOMs, and labeled collectively as 1224 in FIG. 5), so that each such model may use the input target MS location data for generating a “location hypothesis” providing an estimate of the location of the target MS 140; (23.4) providing the generated location hypotheses to an hypothesis evaluation module (denoted the hypothesis evaluator 1228 in FIG. 5):

(a) for adjusting at least one of the target MS location estimates of the generated location hypotheses and related confidence values indicating the confidence given to each location estimate, wherein such adjusting uses archival information related to the accuracy of previously generated location hypotheses,

(b) for evaluating the location hypotheses according to various heuristics related to, for example, the radio coverage area 120 terrain, the laws of physics, characteristics of likely movement of the target MS 140; and

(c) for determining a most likely location area for the target MS 140, wherein the measurement of confidence associated with each input MS location area estimate is used for determining a “most likely location area”; and

(23.5) outputting a most likely target MS location estimate to one or more applications 146 (FIG. 5) requesting an estimate of the location of the target MS 140.

(E) Location Hypothesis Data Representation

In order to describe how the steps (23.1) through (23.5) are performed in the sections below, some introductory remarks related to the data denoted above as location hypotheses will be helpful. Additionally, it will also be helpful to provide introductory remarks related to historical location data and the data base management programs associated therewith.

For each target MS location estimate generated and utilized by the present invention, the location estimate is provided in a data structure (or object class) denoted as a “location hypothesis” (illustrated in Table LH-1). Although brief descriptions of the data fields for a location hypothesis is provided in the Table LH-1, many fields require additional explanation. Accordingly, location hypothesis data fields are further described as noted below.

TABLE LH-1 FOM_ID First order model ID (providing this Location Hypothesis); note, since it is possible for location hypotheses to be generated by other than the FOMs 1224, in general, this field identifies the module that generated this location hypothesis. MS_ID The identification of the target MS 140 to this location hypothesis applies. pt_est The most likely location point estimate of the target MS 140. valid_pt Boolean indicating the validity of “pt_est”. area_est Location Area Estimate of the target MS 140 provided by the FOM. This area estimate will be used whenever “image_area” below is NULL. valid_area Boolean indicating the validity of “area_est” (one of “pt_est” and “area_est” must be valid). adjust Boolean (true if adjustments to the fields of this location hypothesis are to be performed in the Context adjuster Module). pt_covering Reference to a substantially minimal area (e.g., mesh cell) covering of “pt_est”. Note, since this MS 140 may be substantially on a cell boundary, this covering may, in some cases, include more than one cell. image_area Reference to a substantially minimal area (e.g., mesh cell) covering of “pt_covering” (see detailed description of the function, “confidence_adjuster”). Note that if this field is not NULL, then this is the target MS location estimate used by the location center 142 instead of “area_est”. extrapolation_area Reference to (if non-NULL) an extrapolated MS target estimate area provided by the location extrapolator submodule 1432 of the hypothesis analyzer 1332 (FIGS. 6(2) and 7).. That is, this field, if non-NULL, is an extrapolation of the “image_area” field if it exists, otherwise this field is an extrapolation of the “area_est” field. Note other extrapolation fields may also be provided depending on the embodiment of the present disclosure, such as an extrapolation of the “pt_covering”. confidence A real value in the range [−1.0, +1.0] indicating a likelihood that the target MS 140 is in (or out) of a particular area. If positive: if “image_area” exists, then this is a measure of the likelihood that the target MS 140 is within the area represented by “image_area”, or if “image_area” has not been computed (e.g., “adjust” is FALSE), then “area_est” must be valid and this is a measure of the likelihood that the target MS 140 is within the area represented by “area_est”. If negative, then “area_est” must be valid and this is a measure of the likelihood that the target MS 140 is NOT in the area represented by “area_est”. If it is zero (near zero), then the likelihood is unknown. Original_Timestamp Date and time that the location signature cluster (defined hereinbelow) for this location hypothesis was received by the signal processing subsystem 1220. Active_Timestamp Run-time field providing the time to which this location hypothesis has had its MS location estimate(s) extrapolated (in the location extrapolator 1432 of the hypothesis analyzer 1332). Note that this field is initialized with the value from the “Original_Timestamp” field. Processing Tags and For indicating particular types of environmental classifications not readily environmental categorizations determined by the “Original_Timestamp” field (e.g., weather, traffic), and restrictions on location hypothesis processing. loc_sig_cluster Provides access to the collection of location signature signal characteristics derived from communications between the target MS 140 and the base station(s) detected by this MS (discussed in detail hereinbelow); in particular, the location data accessed here is provided to the first order models by the signal processing subsystem 1220; i.e., access to the “loc_sigs” (received at “timestamp” regarding the location of the target MS) descriptor Original descriptor (from the First order model indicating why/how the Location Area Estimate and Confidence Value were determined).

As can be seen in the Table LH-1, each location hypothesis data structure includes at least one measurement, denoted hereinafter as a confidence value (or simply confidence), that is a measurement of the perceived likelihood that an MS location estimate in the location hypothesis is an accurate location estimate of the target MS 140. Since such confidence values are an important aspect of the present disclosure, much of the description and use of such confidence values are described below; however, a brief description is provided here. Each such confidence value is in the range −1.0 to 1.0, wherein the larger the value, the greater the perceived likelihood that the target MS 140 is in (or at) a corresponding MS location estimate of the location hypothesis to which the confidence value applies. As an aside, note that a location hypothesis may have more than one MS location estimate (as will be discussed in detail below) and the confidence value will typically only correspond or apply to one of the MS location estimates in the location hypothesis. Further, values for the confidence value field may be interpreted as: (a) −1.0 may be interpreted to mean that the target MS 140 is NOT in such a corresponding MS area estimate of the location hypothesis area, (b) 0 may be interpreted to mean that it is unknown as to the likelihood of whether the MS 140 in the corresponding MS area estimate, and (c) +1.0 may be interpreted to mean that the MS 140 is perceived to positively be in the corresponding MS area estimate.

Additionally, note that it is within the scope of the present disclosure that the location hypothesis data structure may also include other related “perception” measurements related to a likelihood of the target MS 140 being in a particular MS location area estimate. For example, it is within the scope of the present disclosure to also utilize measurements such as, (a) “sufficiency factors” for indicating the likelihood that an MS location estimate of a location hypothesis is sufficient for locating the target MS 140; (b) “necessity factors” for indicating the necessity that the target MS be in an particular area estimate. However, to more easily describe the present disclosure, a single confidence field is used.

Additionally, in utilizing location hypotheses in, for example, the location evaluator 1228 as in (23.4) above, it is important to keep in mind that each location hypothesis confidence value is a relative measurement. That is, for confidences, cf₁, and cf₂, if cf₁<=cf₂, then for a location hypotheses H₁ and H₂ having cf₁ and cf₂, respectively, the target MS 140 is expected to more likely reside in a target MS estimate of H₂ than a target MS estimate of H₁. Moreover, if an area, A, is such that it is included in a plurality of location hypothesis target MS estimates, then a confidence score, CS_(A), can be assigned to A, wherein the confidence score for such an area is a function of the confidences (both positive and negative) for all the location hypotheses whose (most pertinent) target MS location estimates contain A. That is, in order to determine a most likely target MS location area estimate for outputting from the location center 142, a confidence score is determined for areas within the location center service area. More particularly, if a function, “f”, is a function of the confidence(s) of location hypotheses, and f is a monotonic function in its parameters and f(cf₁, cf₂, cf₃, . . . , Cf_(N))=CS_(A) for confidences cf_(i) of location hypotheses H_(i), i=1, 2, . . . , N, with CS_(A) contained in the area estimate for H_(i), then “f” is denoted a confidence score function. Accordingly, there are many embodiments for a confidence score function f that may be utilized in computing confidence scores with an embodiment of the present disclosure; e.g.,

f(cf ₁ , cf ₂ , . . . , cf _(N))=Σcf _(i) =CS _(A);  (a)

f(cf ₁ , cf ₂ , . . . , cf _(N))=Σcf _(i) ^(n) =CS _(A), n=1, 3, 5, . . . ;  (b)

f(cf ₁ , cf ₂ , . . . , cf _(N))=Σ(K _(i) *Cf _(i))=CS _(A),  (c)

wherein K_(i), i=1, 2, . . . are positive system (tunable) constants (possibly dependent on environmental characteristics such as topography, time, date, traffic, weather, and/or the type of base station(s) 122 from which location signatures with the target MS 140 are being generated, etc.).

For the present description of the invention, the function f as defined in (c) immediately above is utilized. However, for obtaining a general understanding of the present disclosure, the simpler confidence score function of (a) may be more useful. It is important to note, though, that it is within the scope of the present disclosure to use other functions for the confidence score function.

(F) Coverage Area: Area Types And Their Determination

The notion of “area type” as related to wireless signal transmission characteristics has been used in many investigations of radio signal transmission characteristics. Some investigators, when investigating such signal characteristics of areas have used somewhat naive area classifications such as urban, suburban, rural, etc. However, it is desirable for the purposes of the present disclosure to have a more operational definition of area types that is more closely associated with wireless signal transmission behaviors.

To describe embodiments of the an area type scheme used in an embodiment of the present disclosure, some introductory remarks are first provided. Note that the wireless signal transmission behavior for an area depends on at least the following criteria:

-   -   (23.8.1) substantially invariant terrain characteristics (both         natural and man-made) of the area; e.g., mountains, buildings,         lakes, highways, bridges, building density;     -   (23.8.2) time varying environmental characteristics (both         natural and man-made) of the area; e.g., foliage, traffic,         weather, special events such as baseball games;     -   (23.8.3) wireless communication components or infrastructure in         the area; e.g., the arrangement and signal communication         characteristics of the base stations 122 in the area. Further,         the antenna characteristics at the base stations 122 may be         important criteria.

Accordingly, a description of wireless signal characteristics for determining area types could potentially include a characterization of wireless signaling attributes as they relate to each of the above criteria. Thus, an area type might be: hilly, treed, suburban, having no buildings above 50 feet, with base stations spaced apart by two miles. However, a categorization of area types is desired that is both more closely tied to the wireless signaling characteristics of the area, and is capable of being computed substantially automatically and repeatedly over time. Moreover, for a wireless location system, the primary wireless signaling characteristics for categorizing areas into at least minimally similar area types are: thermal noise and, more importantly, multipath characteristics (e.g., multipath fade and time delay).

Focusing for the moment on the multipath characteristics, it is believed that (23.8.1) and (23.8.3) immediately above are, in general, more important criteria for accurately locating an MS 140 than (23.8.2). That is, regarding (23.8.1), multipath tends to increase as the density of nearby vertical area changes increases. For example, multipath is particularly problematic where there is a high density of high rise buildings and/or where there are closely spaced geographic undulations. In both cases, the amount of change in vertical area per unit of area in a horizontal plane (for some horizontal reference plane) may be high. Regarding (23.8.3), the greater the density of base stations 122, the less problematic multipath may become in locating an MS 140. Moreover, the arrangement of the base stations 122 in the radio coverage area 120 in FIG. 4 may affect the amount and severity of multipath.

Accordingly, it would be desirable to have a method and system for straightforwardly determining area type classifications related to multipath, and in particular, multipath due to (23.8.1) and (23.8.3). The present disclosure provides such a determination by utilizing a novel notion of area type, hereinafter denoted “transmission area type” (or, “area type” when both a generic area type classification scheme and the transmission area type discussed hereinafter are intended) for classifying “similar” areas, wherein each transmission area type class or category is intended to describe an area having at least minimally similar wireless signal transmission characteristics. That is, the novel transmission area type scheme of the present disclosure is based on: (a) the terrain area classifications; e.g., the terrain of an area surrounding a target MS 140, (b) the configuration of base stations 122 in the radio coverage area 120, and (c) characterizations of the wireless signal transmission paths between a target MS 140 location and the base stations 122.

In one embodiment of a method and system for determining such (transmission) area type approximations, a partition (denoted hereinafter as P₀) is imposed upon the radio coverage area 120 for partitioning for radio coverage area into subareas, wherein each subarea is an estimate of an area having included MS 140 locations that are likely to have is at least a minimal amount of similarity in their wireless signaling characteristics. To obtain the partition P₀ of the radio coverage area 120, the following steps are performed:

-   -   (23.8.4.1) Partition the radio coverage area 120 into subareas,         wherein in each subarea is: (a) connected, (b) variations in the         lengths of chords sectioning the subarea through the centroid of         the subarea are below a predetermined threshold, (c) the subarea         has an area below a predetermined value, and (d) for most         locations (e.g., within a first or second standard deviation)         within the subarea whose wireless signaling characteristics have         been verified, it is likely (e.g., within a first or second         standard deviation) that an MS 140 at one of these locations         will detect (forward transmission path) and/or will be detected         (reverse transmission path) by a same collection of base         stations 122. For example, in a CDMA context, a first such         collection may be (for the forward transmission path) the active         set of base stations 122, or, the union of the active and         candidate sets, or, the union of the active, candidate and/or         remaining sets of base stations 122 detected by “most” MSs 140         in the subarea. Additionally (or alternatively), a second such         collection may be the base stations 122 that are expected to         detect MSs 140 at locations within the subarea. Of course, the         union or intersection of the first and second collections is         also within the scope of the present disclosure for partitioning         the radio coverage area 120 according to (d) above. It is worth         noting that it is believed that base station 122 power levels         will be substantially constant. However, even if this is not the         case, one or more collections for (d) above may be determined         empirically and/or by computationally simulating the power         output of each base station 122 at a predetermined level.         Moreover, it is also worth mentioning that this step is         relatively straightforward to implement using the data stored in         the location signature data base 1320 (i.e., the verified         location signature clusters discussed in detail hereinbelow).         Denote the resulting partition here as P₁.     -   (23.8.4.2) Partition the radio coverage area 120 into subareas,         wherein each subarea appears to have substantially homogeneous         terrain characteristics. Note, this may be performed         periodically substantially automatically by scanning radio         coverage area images obtained from aerial or satellite imaging.         For example, EarthWatch Inc. of Longmont, Colo. can provide         geographic with 3 meter resolution from satellite imaging data.         Denote the resulting partition here as P₂.     -   (23.8.4.3) Overlay both of the above partitions, P₁ and P₂, of         the radio coverage area 120 to obtain new subareas that are         intersections of the subareas from each of the above partitions.         This new partition is P₀ (i.e., P₀=P₁ intersect P₂), and the         subareas of it are denoted as “P₀ subareas”.

Now assuming P₀ has been obtained, the subareas of P₀ are provided with a first classification or categorization as follows:

-   -   (23.8.4.4) Determine an area type categorization scheme for the         subareas of P₁. For example, a subarea, A, of P₁, may be         categorized or labeled according to the number of base stations         122 in each of the collections used in (23.8.4.1)(d) above for         determining subareas of P₁. Thus, in one such categorization         scheme, each category may correspond to a single number x (such         as 3), wherein for a subarea, A, of this category, there is a         group of x (e.g., three) base stations 122 that are expected to         be detected by a most target MSs 140 in the area A. Other         embodiments are also possible, such as a categorization scheme         wherein each category may correspond to a triple: of numbers         such as (5, 2, 1), wherein for a subarea A of this category,         there is a common group of 5 base stations 122 with two-way         signal detection expected with most locations (e.g., within a         first or second deviation) within A, there are 2 base stations         that are expected to be detected by a target MS 140 in A but         these base stations can not detect the target MS, and there is         one base station 122 that is expected to be able to detect a         target MS in A but not be detected.     -   (23.8.4.5) Determine an area type categorization scheme for the         subareas of P₂. Note that the subareas of P₂ may be categorized         according to their similarities. In one embodiment, such         categories may be somewhat similar to the naive area types         mentioned above (e.g., dense urban, urban, suburban, rural,         mountain, etc.). However, it is also an aspect of the present         disclosure that more precise categorizations may be used, such         as a category for all areas having between 20,000 and 30,000         square feet of vertical area change per 11,000 square feet of         horizontal area and also having a high traffic volume (such a         category likely corresponding to a “moderately dense urban” area         type).     -   (23.8.4.6) Categorize subareas of P₀ with a categorization         scheme denoted the “P₀ categorization,” wherein for each P₀         subarea, A, a “P₀ area type” is determined for A according to         the following substep(s):         -   (a) Categorize A by the two categories from (23.8.4.4) and             (23.8.5) with which it is identified. Thus, A is categorized             (in a corresponding P₀ area type) both according to its             terrain and the base station infrastructure configuration in             the radio coverage area 120.     -   (23.8.4.7) For each P₀ subarea, A, of P₀ perform the following         step(s):         -   (a) Determine a centroid, C(A), for A;         -   (b) Determine an approximation to a wireless transmission             path between C(A) and each base station 122 of a             predetermined group of base stations expected to be in (one             and/or two-way) signal communication with most target MS 140             locations in A. For example, one such approximation is a             straight line between C(A) and each of the base stations 122             in the group. However, other such approximations are within             the scope of the present disclosure, such as, a generally             triangular shaped area as the transmission path, wherein a             first vertex of this area is at the corresponding base             station for the transmission path, and the sides of the             generally triangular shaped defining the first vertex have a             smallest angle between them that allows A to be completely             between these sides.         -   (c) For each base station 122, BS_(i), in the group             mentioned in (b) above, create an empty list, BS_(i)-list,             and put on this list at least the P₀ area types for the             “significant” P₀ subareas crossed by the transmission path             between C(A) and BS_(i). Note that “significant” P₀ subareas             may be defined as, for example, the P₀ subareas through             which at least a minimal length of the transmission path             traverses. Alternatively, such “significant” P₀ subareas may             be defined as those P₀ subareas that additionally are known             or expected to generate substantial multipath.         -   (d) Assign as the transmission area type for A as the             collection of BS_(i)-lists. Thus, any other P₀ subarea             having the same (or substantially similar) collection of             lists of P₀ area types will be viewed as having             approximately the same radio transmission characteristics.

Note that other transmission signal characteristics may be incorporated into the transmission area types. For example, thermal noise characteristics may be included by providing a third radio coverage area 120 partition, P₃, in addition to the partitions of P₁ and P₂ generated in (23.8.4.1) and (23.8.4.2) respectively. Moreover, the time varying characteristics of (23.8.2) may be incorporated in the transmission area type frame work by generating multiple versions of the transmission area types such that the transmission area type for a given subarea of P₀ may change depending on the combination of time varying environmental characteristics to be considered in the transmission area types. For instance, to account for seasonality, four versions of the partitions P₁ and P₂ may be generated, one for each of the seasons, and subsequently generate a (potentially) different partition P₀ for each season. Further, the type and/or characteristics of base station 122 antennas may also be included in an embodiment of the transmission area type.

Accordingly, in one embodiment of the present invention, whenever the term “area type” is used hereinbelow, transmission area types as described hereinabove are intended.

(G) Location Information Data Bases And Data (G.1) Location Data Bases Introduction

It is an aspect of the present disclosure that MS location processing performed by the location center 142 should become increasingly better at locating a target MS 140 both by (a) building an increasingly more detailed model of the signal characteristics of locations in the service area for an embodiment of the present disclosure, and also (b) by providing capabilities for the location center processing to adapt to environmental changes.

One way these aspects of the present disclosure are realized is by providing one or more data base management systems and data bases for:

(a) storing and associating wireless MS signal characteristics with known locations of MSs 140 used in providing the signal characteristics. Such stored associations may not only provide an increasingly better model of the signal characteristics of the geography of the service area, but also provide an increasingly better model of more changeable signal characteristics affecting environmental factors such as weather, seasons, and/or traffic patterns;

(b) adaptively updating the signal characteristic data stored so that it reflects changes in the environment of the service area such as, for example, a new high rise building or a new highway.

Referring again to FIG. 5 of the collective representation of these data bases is the location information data bases 1232. Included among these data bases is a data base for providing training and/or calibration data to one or more trainable/calibratable FOMs 1224, as well as an archival data base for archiving historical MS location information related to the performance of the FOMs. These data bases will be discussed as necessary hereinbelow. However, a further brief introduction to the archival data base is provided here. Accordingly, the term, “location signature data base” is used hereinafter to denote the archival data base and/or data base management system depending on the context of the discussion. The location signature data base (shown in, for example, FIG. 6 and labeled 1320) is a repository for wireless signal characteristic data derived from wireless signal communications between an MS 140 and one or more base stations 122, wherein the corresponding location of the MS 140 is known and also stored in the location signature data base 1320. More particularly, the location signature data base 1320 associates each such known MS location with the wireless signal characteristic data derived from wireless signal communications between the MS 140 and one or more base stations 122 at this MS location. Accordingly, it is an aspect of the present disclosure to utilize such historical MS signal location data for enhancing the correctness and/or confidence of certain location hypotheses as will be described in detail in other sections below.

(G.2) Data Representations for the Location Signature Data Base

There are four fundamental entity types (or object classes in an object oriented programming paradigm) utilized in the location signature data base 1320. Briefly, these data entities are described in the items (24.1) through (24.4) that follow:

(24.1) (verified) location signatures: Each such (verified) location signature describes the wireless signal characteristic measurements between a given base station (e.g., BS 122 or LBS 152) and an MS 140 at a (verified or known) location associated with the (verified) location signature. That is, a verified location signature corresponds to a location whose coordinates such as latitude-longitude coordinates are known, while simply a location signature may have a known or unknown location corresponding with it. Note that the term (verified) location signature is also denoted by the abbreviation, “(verified) loc sig” hereinbelow; (24.2) (verified) location signature clusters: Each such (verified) location signature cluster includes a collection of (verified) location signatures corresponding to all the location signatures between a target MS 140 at a (possibly verified) presumed substantially stationary location and each BS (e.g., 122 or 152) from which the target MS 140 can detect the BS's pilot channel regardless of the classification of the BS in the target MS (i.e., for CDMA, regardless of whether a BS is in the MS's active, candidate or remaining base station sets, as one skilled in the art will understand). Note that for simplicity here, it is presumed that each location signature cluster has a single fixed primary base station to which the target MS 140 synchronizes or obtains its timing; (24.3) “composite location objects (or entities)”: Each such entity is a more general entity than the verified location signature cluster. An object of this type is a collection of (verified) location signatures that are associated with the same MS 140 at substantially the same location at the same time and each such loc sig is associated with a different base station. However, there is no requirement that a loc sig from each BS 122 for which the MS 140 can detect the BS's pilot channel is included in the “composite location object (or entity)”; and (24.4) MS location estimation data that includes MS location estimates output by one or more MS location estimating first order models 1224, such MS location estimate data is described in detail hereinbelow.

It is important to note that a loc sig is, in one embodiment, an instance of the data structure containing the signal characteristic measurements output by the signal filtering and normalizing subsystem also denoted as the signal processing subsystem 1220 describing the signals between: (i) a specific base station 122 (BS) and (ii) a mobile station 140 (MS), wherein the BS's location is known and the MS's location is assumed to be substantially constant (during a 2-5 second interval in one embodiment of the present disclosure), during communication with the MS 140 for obtaining a single instance of loc sig data, although the MS location may or may not be known. Further, for notational purposes, the BS 122 and the MS 140 for a loc sig hereinafter will be denoted the “BS associated with the loc sig”, and the “MS associated with the loc sig” respectively. Moreover, the location of the MS 140 at the time the loc sig data is obtained will be denoted the “location associated with the loc sig” (this location possibly being unknown).

(G.2.1) Loc Sig Description

In particular, for each (verified) loc sig includes the following:

-   (25.1) MS_type: the make and model of the target MS 140 associated     with a location signature instantiation; note that the type of MS     140 can also be derived from this entry; e.g., whether MS 140 is a     handset MS, car-set MS, or an MS for location only. Note as an     aside, for at least CDMA, the type of MS 140 provides information as     to the number of fingers that may be measured by the MS, as one     skilled in the will appreciate. -   (25.2) BS_id: an identification of the base station 122 (or,     location base station 152) communicating with the target MS; -   (25.3) MS_loc: a representation of a geographic location (e.g.,     latitude-longitude) or area representing a verified/known MS     location where signal characteristics between the associated     (location) base station and MS 140 were received. That is, if the     “verified_flag” attribute (discussed below) is TRUE, then this     attribute includes an estimated location of the target MS. If     verified_flag is FALSE, then this attribute has a value indicating     “location unknown”.

Note “MS_loc” may include the following two subfields: an area within which the target MS is presumed to be, and a point location (e.g., a latitude and longitude pair) where the target MS is presumed to be (in one embodiment this is the centroid of the area);

-   (25.4) verified_flag: a flag for determining whether the loc sig has     been verified; i.e., the value here is TRUE iff a location of MS_loc     has been verified, FALSE otherwise. Note, if this field is TRUE     (i.e., the loc sig is verified), then the base station identified by     BS_id is the current primary base station for the target MS; -   (25.5) confidence: a value indicating how consistent this loc sig is     with other loc sigs in the location signature data base 1320; the     value for this entry is in the range [0, 1] with 0 corresponding to     the lowest (i.e., no) confidence and 1 corresponding to the highest     confidence. That is, the confidence factor is used for determining     how consistent the loc sig is with other “similaf” verified loc sigs     in the location signature data base 1320, wherein the greater the     confidence value, the better the consistency with other loc sigs in     the data base. Note that similarity in this context may be     operationalized by at least designating a geographic proximity of a     loc sig in which to determine if it is similar to other loc sigs in     this designated geographic proximity and/or area type (e.g.,     transmission area type as elsewhere herein). Thus, environmental     characteristics may also be used in determining similarities such     as: similar time of occurrence (e.g., of day, and/or of month),     similar weather (e.g., snowing, raining, etc.). Note, these latter     characteristics are different from the notion of geographic     proximity since proximity may be only a distance measurement about a     location. Note also that a loc sig having a confidence factor value     below a predetermined threshold may not be used in evaluating MS     location hypotheses generated by the FOMs 1224. -   (25.6) timestamp: the time and date the loc sig was received by the     associated base station of BS_id; -   (25.7) signal topography characteristics: In one embodiment, the     signal topography characteristics retained can be represented as     characteristics of at least a two-dimensional generated surface.     That is, such a surface is generated by the signal processing     subsystem 1220 from signal characteristics accumulated over (a     relatively short) time interval. For example, in the two-dimensional     surface case, the dimensions for the generated surface may be, for     example, signal strength and time delay. That is, the accumulations     over a brief time interval of signal characteristic measurements     between the BS 122 and the MS 140 (associated with the loc sig) may     be classified according to the two signal characteristic dimensions     (e.g., signal strength and corresponding time delay). That is, by     sampling the signal characteristics and classifying the samples     according to a mesh of discrete cells or bins, wherein each cell     corresponds to a different range of signal strengths and time delays     a tally of the number of samples falling in the range of each cell     can be maintained. Accordingly, for each cell, its corresponding     tally may be interpreted as height of the cell, so that when the     heights of all cells are considered, an undulating or mountainous     surface is provided. In particular, for a cell mesh of appropriate     fineness, the “mountainous surface”, is believed to, under most     circumstances, provide a contour that is substantially unique to the     location of the target MS 140. Note that in one embodiment, the     signal samples are typically obtained throughout a predetermined     signal sampling time interval of 2-5 seconds as is discussed     elsewhere in this specification. In particular, the signal     topography characteristics retained for a loc sig include certain     topographical characteristics of such a generated mountainous     surface. For example, each loc sig may include: for each local     maximum (of the loc sig surface) above a predetermined noise ceiling     threshold, the (signal strength, time delay) coordinates of the cell     of the local maximum and the corresponding height of the local     maximum. Additionally, certain gradients may also be included for     characterizing the “steepness” of the surface mountains. Moreover,     note that in some embodiments, a frequency may also be associated     with each local maximum. Thus, the data retained for each selected     local maximum can include a quadruple of signal strength, time     delay, height and frequency. Further note that the data types here     may vary. However, for simplicity, in parts of the description of     loc sig processing related to the signal characteristics here, it is     assumed that the signal characteristic topography data structure     here is a vector; -   (25.8) quality_obj: signal quality (or error) measurements, e.g.,     Eb/No values, as one skilled in the art will understand; -   (25.9) noise_ceiling: noise ceiling values used in the initial     filtering of noise from the signal topography characteristics as     provided by the signal processing subsystem 1220; -   (25.10) power level: power levels of the base station (e.g., 122 or     152) and MS 140 for the signal measurements; -   (25.11) timing_error: an estimated (or maximum) timing error between     the present (associated) BS (e.g., an infrastructure base station     122 or a location base station 152) detecting the target MS 140 and     the current primary BS 122 for the target MS 140. Note that if the     BS 122 associated with the loc sig is the primary base station, then     the value here will be zero; -   (25.12) cluster_ptr: a pointer to the location signature composite     entity to which this loc sig belongs. -   (25.13) repeatable: TRUE iff the loc sig is “repeatable” (as     described hereinafter), FALSE otherwise. Note that each verified loc     sig is designated as either “repeatable” or “random”. A loc sig is     repeatable if the (verified/known) location associated with the loc     sig is such that signal characteristic measurements between the     associated BS 122 and this MS can be either replaced at periodic     time intervals, or updated substantially on demand by most recent     signal characteristic measurements between the associated base     station and the associated MS 140 (or a comparable MS) at the     verified/known location. Repeatable loc sigs may be, for example,     provided by stationary or fixed location MSs 140 (e.g., fixed     location transceivers) distributed within certain areas of a     geographical region serviced by the location center 142 for     providing MS location estimates. That is, it is an aspect of the     present disclosure that each such stationary MS 140 can be contacted     by the location center 142 (via the base stations of the wireless     infrastructure) at substantially any time for providing a new     collection (i.e., cluster) of wireless signal characteristics to be     associated with the verified location for the transceiver.     Alternatively, repeatable loc sigs may be obtained by, for example,     obtaining location signal measurements manually from workers who     regularly traverse a predetermined route through some portion of the     radio coverage area; i.e., postal workers.     -   A loc sig is random if the loc sig is not repeatable. Random loc         sigs are obtained, for example, from verifying a previously         unknown target MS location once the MS 140 has been located.         Such verifications may be accomplished by, for example, a         vehicle having one or more location verifying devices such as a         GPS receiver and/or a manual location input capability becoming         sufficiently close to the located target MS 140 so that the         location of the vehicle may be associated with the wireless         signal characteristics of the MS 140. Vehicles having such         location detection devices may include: (a) vehicles that travel         to locations that are primarily for another purpose than to         verify loc sigs, e.g., police cars, ambulances, fire trucks,         rescue units, courier services and taxis; and/or (b) vehicles         whose primary purpose is to verify loc sigs; e.g., location         signal calibration vehicles. Additionally, vehicles having both         wireless transceivers and location verifying devices may provide         the location center 142 with random loc sigs. Note, a repeatable         loc sig may become a random loc sig if an MS 140 at the location         associated with the loc sig becomes undetectable such as, for         example, when the MS 140 is removed from its verified location         and therefore the loc sig for the location can not be readily         updated.

Additionally, note that at least in one embodiment of the signal topography characteristics (25.7) above, such a first surface may be generated for the (forward) signals from the base station 122 to the target MS 140 and a second such surface may be generated for (or alternatively, the first surface may be enhanced by increasing its dimensionality with) the signals from the MS 140 to the base station 122 (denoted the reverse signals).

Additionally, in some embodiments the location hypothesis may include an estimated error as a measurement of perceived accuracy in addition to or as a substitute for the confidence field discussed hereinabove. Moreover, location hypotheses may also include a text field for providing a reason for the values of one or more of the location hypothesis fields. For example, this text field may provide a reason as to why the confidence value is low, or provide an indication that the wireless signal measurements used had a low signal to noise ratio.

Loc sigs have the following functions or object methods associated therewith:

-   (26.1) A “normalization” method for normalizing loc sig data     according to the associated MS 140 and/or BS 122 signal processing     and generating characteristics. That is, the signal processing     subsystem 1220, one embodiment being described in the PCT patent     application PCT/US97/15933, titled, “Wireless Location Using A     Plurality of Commercial Network Infrastructures,” by F. W. LeBlanc     and the present inventors, filed Sep. 8, 1997 (which has a U.S.     national filing that is now U.S. Pat. No. 6,236,365, filed Jul. 8,     1999, note, both PCT/US97/15933 and U.S. Pat. No. 6,236,365 are     incorporated fully by reference herein) provides (methods for loc     sig objects) for “normalizing” each loc sig so that variations in     signal characteristics resulting from variations in (for example) MS     signal processing and generating characteristics of different types     of MS's may be deduced In particular, since wireless network     designers are typically designing networks for effective use of hand     set MS's 140 having a substantially common minimum set of     performance characteristics, the normalization methods provided here     transform the loc sig data so that it appears as though the loc sig     was provided by a common hand set MS 140. However, other methods may     also be provided to “normalize” a loc sig so that it may be compared     with loc sigs obtained from other types of MS's as well. Note that     such normalization techniques include, for example, interpolating     and extrapolating according to power levels so that loc sigs may be     normalized to the same power level for, e.g., comparison purposes.     -   Normalization for the BS 122 associated with a loc sig is         similar to the normalization for MS signal processing and         generating characteristics. Just as with the MS normalization,         the signal processing subsystem 1220 provides a loc sig method         for “normalizing” loc sigs according to base station signal         processing and generating characteristics.     -   Note, however, loc sigs stored in the location signature data         base 1320 are NOT “normalized” according to either MS or BS         signal processing and generating characteristics. That is, “raw”         values of the wireless signal characteristics are stored with         each loc sig in the location signature data base 1320. -   (26.2) A method for determining the “area type” corresponding to the     signal transmission characteristics of the area(s) between the     associated BS 122 and the associated MS 140 location for the loc     sig. Note, such an area type may be designated by, for example, the     techniques for determining transmission area types as described     hereinabove. -   (26.3) Other methods are contemplated for determining additional     environmental characteristics of the geographical area between the     associated BS 122 and the associated MS 140 location for the loc     sig; e.g., a noise value indicating the amount of noise likely in     such an area.

Referring now to the composite location objects and verified location signature clusters of (24.3) and (24.2) respectively, the following information is contained in these aggregation objects:

-   (27.1.1) an identification of the BS 122 designated as the primary     base station for communicating with the target MS 140; -   (27.1.2) a reference to each loc sig in the location signature data     base 1320 that is for the same MS location at substantially the same     time with the primary BS as identified in (27.1); -   (27.1.3) an identification of each base station (e.g., 122 and 152)     that can be detected by the MS 140 at the time the location signal     measurements are obtained. Note that in one embodiment, each     composite location object includes a bit string having a     corresponding bit for each base station, wherein a “1” for such a     bit indicates that the corresponding base station was identified by     the MS, and a “0” indicates that the base station was not     identified. In an alternative embodiment, additional location signal     measurements may also be included from other non-primary base     stations. For example, the target MS 140 may communicate with other     base stations than it's primary base station. However, since the     timing for the MS 140 is typically derived from it's primary base     station and since timing synchronization between base stations is     not exact (e.g., in the case of CDMA, timing variations may be plus     or minus 1 microsecond) at least some of the location signal     measurements may be less reliable that the measurements from the     primary base station, unless a forced hand-off technique is used to     eliminate system timing errors among relevant base stations; -   (27.1.4) a completeness designation that indicates whether any loc     sigs for the composite location object have been removed from (or     invalidated in) the location signature data base 1320.

Note, a verified composite location object is designated as “incomplete” if a loc sig initially referenced by the verified composite location object is deleted from the location signature data base 1320 (e.g., because of a confidence that is too low). Further note that if all loc sigs for a composite location object are deleted, then the composite object is also deleted from the location signature data base 1320. Also note that common fields between loc sigs referenced by the same composite location object may be provided in the composite location object only (e.g., timestamp, etc.).

Accordingly, a composite location object that is complete (i.e., not incomplete) is a verified location signature cluster as described in (24.2).

(H) Location Center Architecture (H.1) Overview of Location Center/Gateway Functional Components

FIG. 5 presents a high level diagram of the location center 142 and the location engine 139 in the context of the infrastructure for the entire location system of the present invention.

It is important to note that the architecture for the location center 142 and the location engine 139 provided by the present disclosure is designed for extensibility and flexibility so that MS 140 location accuracy and reliability may be enhanced as further location data become available and as enhanced MS location techniques become available. In addressing the design goals of extensibility and flexibility, the high level architecture for generating and processing MS location estimates may be considered as divided into the following high level functional groups described hereinbelow.

(H.2) Low Level Wireless Signal Processing Subsystem for Receiving and Conditioning Wireless Signal Measurements

A first functional group of location engine 139 modules is for performing signal processing and filtering of MS location signal data received from a conventional wireless (e.g., CDMA) infrastructure, as discussed in the steps (23.1) and (23.2) above. This group is denoted the signal processing subsystem 1220 herein. One embodiment of such a subsystem is described in the PCT patent application titled, “Wireless Location Using A Plurality of Commercial Network Infrastructures,” by F. W. LeBlanc, Dupray and Karr filed Jan. 22, 1999 and having application Ser. No. 09/230,109 (now U.S. Pat. No. 6,236,365) which is fully incorporated herein by reference.

(H.3) Initial Location Estimators: First Order Models

A second functional group of location engine 139 modules is for generating various target MS 140 location initial estimates, as described in step (23.3). Accordingly, the modules here use input provided by the signal processing subsystem 1220. This second functional group includes one or more signal analysis modules or models, each hereinafter denoted as a first order model 1224 (FOM), for generating location hypotheses for a target MS 140 to be located. Note that it is intended that each such FOM 1224 use a different technique for determining a location area estimate for the target MS 140. A brief description of some types of first order models is provided immediately below. Note that FIG. 8 illustrates another, more detailed view of the location system for the present invention. In particular, this figure illustrates some of the FOMs 1224 contemplated by the present invention, and additionally illustrates the primary communications with other modules of the location system for the present invention. However, it is important to note that the present invention is not limited to the FOMs 1224 shown and discussed herein. That is, it is a primary aspect of the present invention to easily incorporate FOMs using other signal processing and/or computational location estimating techniques than those presented herein. Further, note that each FOM type may have a plurality of its models incorporated into an embodiment of the present invention.

(H.3.1) TDOA, TOA, AOA FOMs

For example, (as will be described in further detail below), one such type of model or FOM 1224 (hereinafter models of this type are referred to as “distance models”) may be based on a range or distance computation and/or on a base station signal reception angle determination between the target MS 140 from each of one or more base stations. Basically, such distance models 1224 determine a location estimate of the target MS 140 by determining a distance offset from each of one or more base stations 122, possibly in a particular direction from each (some of) the base stations, so that an intersection of each area locus defined by the base station offsets may provide an estimate of the location of the target MS. Distance model FOMs 1224 may compute such offsets based on:

-   -   (a) signal timing measurements between the target mobile station         140 and one or more base stations 122; e.g., timing measurements         such as time difference of arrival (TDOA), or time of arrival         (TOA). Note that both forward and reverse signal path timing         measurements may be utilized;     -   (b) signal strength measurements (e.g., relative to power         control settings of the MS 140 and/or one or more BS 122);         and/or     -   (c) signal angle of arrival measurements, or ranges thereof, at         one or more base stations 122 (such angles and/or angular ranges         provided by, e.g., base station antenna sectors having angular         ranges of 120⁰ or 60⁰, or, so called “SMART antennas” with         variable angular transmission ranges of 2⁰ to 120⁰).         Accordingly, a distance model may utilize triangulation or         trilateration to compute a location hypothesis having either an         area location or a point location for an estimate of the target         MS 140. Additionally, in some embodiments location hypothesis         may include an estimated error.

In one embodiment, such a distance model may perform the following steps:

-   -   (a) Determines a minimum distance between the target MS and each         BS using TOA, TDOA, signal strength on both forward and reverse         paths;     -   (b) Generates an estimated error;     -   (c) Outputs a location hypothesis for estimating a location of a         MS: each such hypothesis having: (a) one or more (nested)         location area estimates for the MS, each location estimate         having a confidence value (e.g., provided using the estimated         error) indicating a perceived accuracy, and (b) a reason for         both the location estimate (e.g., substantial multipath, etc)         and the confidence.

(H.3.2) Statistically Based First Order Model

Another type of FOM 1224 is a statistically based first order model 1224, wherein a statistical technique, such as regression techniques (e.g., least squares, partial least squares, principle decomposition), or e.g., Bollenger Bands (e.g., for computing minimum and maximum base station offsets). In general, models of this type output location hypotheses that are determined by performing one or more statistical techniques or comparisons between the verified location signatures in location signature data base 1320, and the wireless signal measurements from a target MS. Models of this type are also referred to hereinafter as a “stochastic signal (first order) model” or a “stochastic FOM” or a “statistical model.”

In one embodiment, such a stochastic signal model may output location hypotheses determined by one or more statistical comparisons with loc sigs in the Location Signature database 1320 (e.g., comparing MS location signals with verified signal characteristics for predetermined geographical areas).

(H.3.3) Adaptive and/or Learning First Order Model

Still another type of FOM 1224 is an adaptive learning model, such as an artificial neural net or a genetic algorithm, wherein the FOM may be trained to recognize or associate each of a plurality of locations with a corresponding set of signal characteristics for communications between the target MS 140 (at the location) and the base stations 122. Moreover, typically such a FOM is expected to accurately interpolate/extrapolate target MS 140 location estimates from a set of signal characteristics from an unknown target MS 140 location. Models of this type are also referred to hereinafter variously as “artificial neural net models” or “neural net models” or “trainable models” or “learning models.” Note that a related type of FOM 1224 is based on pattern recognition. These FOMs can recognize patterns in the signal characteristics of communications between the target MS 140 (at the location) and the base stations 122 and thereby estimate a location area of the target MS. However, such FOMs may not be trainable.

In one embodiment, an adaptive learning model such as a model based on an artificial neural network may determine an MS 140 location estimate using base station IDs, data on signal-to-noise, other signal data (e.g., a number of signal characteristics including, e.g., all CDMA fingers). Moreover, the output from such a model may include: a latitude and longitude for a center of a circle having radius R (R may be an input to such an artificial neural network), and is in the output format of the distance model(s).

(H.3.4) Location Base Station (LBS) First Order Model

Yet another type of FOM 1224 can be based on a collection of dispersed low power, low cost fixed location wireless transceivers (also denoted “location base stations 152” hereinabove) that are provided for detecting a target MS 140 in areas where, e.g., there is insufficient base station 122 infrastructure coverage for providing a desired level of MS 140 location accuracy. For example, it may uneconomical to provide high traffic wireless voice coverage of a typical wireless base station 122 in a nature preserve or at a fair ground that is only populated a few days out of the year. However, if such low cost location base stations 152 can be directed to activate and deactivate via the direction of a FOM 1224 of the present type, then these location base stations can be used to both locate a target MS 140 and also provide indications of where the target MS is not. For example, if there are location base stations 152 populating an area where the target MS 140 is presumed to be, then by activating these location base stations 152, evidence may be obtained as to whether or not the target MS is actually in the area; e.g., if the target MS 140 is detected by a location base station 152, then a corresponding location hypothesis having a location estimate corresponding to the coverage area of the location base station may have a very high confidence value. Alternatively, if the target MS 140 is not detected by a location base station 152, then a corresponding location hypothesis having a location estimate corresponding to the coverage area of the location base station may have a very low confidence value. Models of this type are referred to hereinafter as “location base station models.”

In one embodiment, such a location base station model may perform the following steps:

-   -   (a) If an input is received then the target MS 140 is detected         by a location base station 152 (i.e., a LBS being a unit having         a reduced power BS and a MS).     -   (b) If an input is obtained, then the output is a hypothesis         data structure having a small area of the highest confidence.     -   (c) If no input is received from a LBS then a hypothesis having         an area with highest negative confidence is output.

(H.3.5) Mobile Base Station First Order Model

Yet another type of FOM 1224 can be based on input from a mobile base station 148, wherein location hypotheses may be generated from target MS 140 location data received from the mobile base station 148. In one embodiment, such a mobile base station model may provide output similar to the distance FOM 1224 described hereinabove.

(H.3.6) Signal Pattern Recognition First Order Model

Still other types of FOM 1224 can be based on various techniques for recognizing wireless signal measurement patterns and associating particular patterns with locations in the coverage area 120. For example, artificial neural networks or other learning models can be used as the basis for various FOMs.

Note that the FOM types mentioned here as well as other FOM types are discussed in detail hereinbelow. Moreover, it is important to keep in mind that a novel aspect of the present invention is the simultaneous use or activation of a potentially large number of such first order models 1224, wherein such FOMs are not limited to those described herein. Thus, the present invention provides a framework for incorporating MS location estimators to be subsequently provided as new FOMs in a straightforward manner. For example, a FOM 1224 based on wireless signal time delay measurements from a distributed antenna system 168 for wireless communication may be incorporated into the present invention for locating a target MS 140 in an enclosed area serviced by the distributed antenna system (such a FOM is more fully described in the U.S. Pat. No. 6,236,365 filed Jul. 8, 1999 which is incorporated fully by reference herein). Accordingly, by using such a distributed antenna FOM 1224 (FIG. 8(1)), an embodiment of the present disclosure may determine the floor of a multi-story building from which a target MS is transmitting. Thus, MSs 140 can be located in three dimensions using such a distributed antenna FOM 1224.

In one embodiment, such a distributed antenna model may perform the following steps:

-   -   (a) Receives input only from a distributed antenna system.     -   (b) If an input is received, then the output is a lat-long and         height of highest confidence.

Additionally, FOMs 1224 for detecting certain registration changes within, for example, a public switched telephone network 124 can also be used for locating a target MS 140. For example, for some MSs 140 there may be an associated or dedicated device for each such MS that allows the MS to function as a cordless phone to a line based telephone network when the device detects that the MS is within signaling range. In one use of such a device (also denoted herein as a “home base station”), the device registers with a home location register of the public switched telephone network 124 when there is a status change such as from not detecting the corresponding MS to detecting the MS, or visa versa, as one skilled in the art will understand. Accordingly, by providing a FOM 1224 (denoted the “Home Base Station First Order Model” in FIG. 8(1)) that accesses the MS status in the home location register, the location engine 139 can determine whether the MS is within signaling range of the home base station or not, and generate location hypotheses accordingly.

In one embodiment, such a home base station model may perform the following steps:

-   -   (a) Receives an input only from the Public Telephone Switching         Network.     -   (b) If an input is received then the target MS 140 is detected         by a home base station associated with the target MS.     -   (c) If an input is obtained, then the output is a hypothesis         data structure having a small area of the highest confidence.     -   (d) If no input and there is a home base station then a         hypothesis having a negative area is of highest confidence is         output.

Moreover, other FOMs based on, for example, chaos theory and/or fractal theory are also within the scope of the present invention.

It is important to note the following aspects of the present invention relating to FOMs 1224:

-   (28.1) Each such first order model 1224 may be relatively easily     incorporated into and/or removed from an embodiment of the present     disclosure. For example, assuming that the signal processing     subsystem 1220 provides uniform input interface to the FOMs, and     there is a uniform FOM output interface (e.g., an API), it is     believed that a large majority (if not substantially all) viable MS     location estimation strategies may be accommodated. Thus, it is     straightforward to add or delete such FOMs 1224. -   (28.2) First order models 1224 may be relatively simple and still     provide significant MS 140 locating functionality and     predictability. For example, much of what is believed to be common     or generic MS location processing has been coalesced into, for     example: a location hypothesis evaluation subsystem, denoted the     hypotheses evaluator 1228 and described immediately below. Thus,     embodiments of the present disclosure may be modular and extensible     such that, for example, (and importantly) different first order     models 1224 may be utilized depending on the signal transmission     characteristics of the geographic region serviced by an embodiment     of the present disclosure. Thus, a simple configuration of an     embodiment of the present disclosure may have (or access) a small     number of FOMs 1224 for a simple wireless signal environment (e.g.,     flat terrain, no urban canyons and low population density).     Alternatively, for complex wireless signal environments such as in     cities like San Francisco, Tokyo or New York, a large number of FOMs     1224 may be simultaneously utilized for generating MS location     hypotheses.

(H.4) An Introduction to an Evaluator for Location Hypotheses: Hypothesis Evaluator

A third functional group of location engine 139 modules evaluates location hypotheses output by the first order models 1224 and thereby provides a “most likely” target MS location estimate. The modules for this functional group are collectively denoted the hypothesis evaluator 1228.

(H.4.1) Hypothesis Evaluator Introduction

A primary purpose of the hypothesis evaluator 1228 is to mitigate conflicts and ambiguities related to location hypotheses output by the first order models 1224 and thereby output a “most likely” estimate of an MS for which there is a request for it to be located. In providing this capability, there are various related embodiments of the hypothesis evaluator that are within the scope of the present disclosure. Since each location hypothesis includes both an MS location area estimate and a corresponding confidence value indicating a perceived confidence or likelihood of the target MS being within the corresponding location area estimate, there is a monotonic relationship between MS location area estimates and confidence values. That is, by increasing an MS location area estimate, the corresponding confidence value may also be increased (in an extreme case, the location area estimate could be the entire coverage area 120 and thus the confidence value may likely correspond to the highest level of certainty; i.e., +1.0). Accordingly, given a target MS location area estimate (of a location hypothesis), an adjustment to its accuracy may be performed by adjusting the MS location area estimate and/or the corresponding confidence value. Thus, if the confidence value is, for example, excessively low then the area estimate may be increased as a technique for increasing the confidence value. Alternatively, if the estimated area is excessively large, and there is flexibility in the corresponding confidence value, then the estimated area may be decreased and the confidence value also decreased. Thus, if at some point in the processing of a location hypothesis, if the location hypothesis is judged to be more (less) accurate than initially determined, then (i) the confidence value of the location hypothesis can be increased (decreased), and/or (ii) the MS location area estimate can be decreased (increased).

In a first class of embodiments, the hypothesis evaluator 1228 evaluates location hypotheses and adjusts or modifies only their confidence values for MS location area estimates and subsequently uses these MS location estimates with the adjusted confidence values for determining a “most likely” MS location estimate for outputting. Accordingly, the MS location area estimates are not substantially modified. Alternatively, in a second class of embodiments for the hypothesis evaluator 1228, MS location area estimates can be adjusted while confidence values remain substantially fixed. Of course, hybrids between the first two embodiments can also be provided. Note that the present embodiment provided herein adjusts both the areas and the confidence values.

More particularly, the hypothesis evaluator 1228 may perform any or most of the following tasks:

-   (30.1) it utilizes environmental information to improve and     reconcile location hypotheses supplied by the first order models     1224. A basic premise in this context is that the accuracy of the     individual first order models may be affected by various     environmental factors such as, for example, the season of the year,     the time of day, the weather conditions, the presence of buildings,     base station failures, etc.; -   (30.2) it enhances the accuracy of an initial location hypothesis     generated by a FOM by using the initial location hypothesis as,     essentially, a query or index into the location signature data base     1320 for obtaining a corresponding enhanced location hypothesis,     wherein the enhanced location hypothesis has both an adjusted target     MS location area estimate and an adjusted confidence based on past     performance of the FOM in the location service surrounding the     target MS location estimate of the initial location hypothesis; -   (30.3) it determines how well the associated signal characteristics     used for locating a target MS compare with particular verified loc     sigs stored in the location signature data base 1320 (see the     location signature data base section for further discussion     regarding this aspect of the invention). That is, for a given     location hypothesis, verified loc sigs (which were previously     obtained from one or more verified locations of one or more MS's)     are retrieved for an area corresponding to the location area     estimate of the location hypothesis, and the signal characteristics     of these verified loc sigs are compared with the signal     characteristics used to generate the location hypothesis for     determining their similarities and subsequently an adjustment to the     confidence of the location hypothesis (and/or the size of the     location area estimate); -   (30.4) the hypothesis evaluator 1228 determines if (or how well)     such location hypotheses are consistent with well known physical     constraints such as the laws of physics. For example, if the     difference between a previous (most likely) location estimate of a     target MS and a location estimate by a current location hypothesis     requires the MS to:     -   (a1) move at an unreasonably high rate of speed (e.g., 200 mph),         or     -   (b1) move at an unreasonably high rate of speed for an area         (e.g., 80 mph in a corn patch), or     -   (c1) make unreasonably sharp velocity changes (e.g., from 60 mph         in one direction to 60 mph in the opposite direction in 4 sec),         then the confidence in the current Location Hypothesis is likely         to be reduced. -    Alternatively, if for example, the difference between a previous     location estimate of a target MS and a current location hypothesis     indicates that the MS is:     -   (a2) moving at an appropriate velocity for the area being         traversed, or     -   (b2) moving along an established path (e.g., a freeway), -    then the confidence in the current location hypothesis may be     increased. -   (30.5) the hypothesis evaluator 1228 determines consistencies and     inconsistencies between location hypotheses obtained from different     first order models. For example, if two such location hypotheses,     for substantially the same timestamp, have estimated location areas     where the target MS is likely to be and these areas substantially     overlap, then the confidence in both such location hypotheses may be     increased. Additionally, note that a velocity of an MS may be     determined (via deltas of successive location hypotheses from one or     more first order models) even when there is low confidence in the     location estimates for the MS, since such deltas may, in some cases,     be more reliable than the actual target MS location estimates; -   (30.6) the hypothesis evaluator 1228 determines new (more accurate)     location hypotheses from other location hypotheses. For example,     this module may generate new hypotheses from currently active ones     by decomposing a location hypothesis having a target MS location     estimate intersecting two radically different wireless signaling     area types. Additionally, this module may generate location     hypotheses indicating areas of poor reception; and -   (30.7) the hypothesis evaluator 1228 determines and outputs a most     likely location hypothesis for a target MS.

Note that the hypothesis evaluator may accomplish the above tasks, (30.1)-(30.7), by employing various data processing tools including, but not limited to, fuzzy mathematics, genetic algorithms, neural networks, expert systems and/or blackboard systems.

Additionally note that, as can be seen in FIGS. 6 and 7, the hypothesis evaluator 1228 includes the following four high level modules for processing output location hypotheses from the first order models 1224: a context adjuster 1326, a hypothesis analyzer 1332, an MS status repository 1338 and a most likelihood estimator 1334. These four modules are briefly described hereinbelow.

(H.4.1.1) Context Adjuster Introduction.

The context adjuster 1326 module enhances both the comparability and predictability of the location hypotheses output by the first order models 1224. In particular, this module modifies location hypotheses received from the FOMs 1224 so that the resulting location hypotheses output by the context adjuster 1326 may be further processed uniformly and substantially without concern as to differences in accuracy between the first order models from which location hypotheses originate. In providing this capability, the context adjuster 1326 may adjust or modify various fields of the input location hypotheses. In particular, fields giving target MS 140 location estimates and/or confidence values for such estimates may be modified by the context adjuster 1326. Further, this module may determine those factors that are perceived to impact the perceived accuracy (e.g., confidence) of the location hypotheses: (a) differently between FOMs, and/or (b) with substantial effect. For instance, environmental characteristics may be taken into account here, such as time of day, season, month, weather, geographical area categorizations (e.g., dense urban, urban, suburban, rural, mountain, etc.), area subcategorizations (e.g., heavily treed, hilly, high traffic area, etc.). A detailed description of one embodiment of this module is provided in APPENDIX D hereinbelow. Note that, the embodiment described herein is simplified for illustration purposes such that only the geographical area categorizations are utilized in adjusting (i.e., modifying) location hypotheses. But, it is an important aspect of the present disclosure that various categorizations, such as those mentioned immediately above, may be used for adjusting the location hypotheses. That is, categories such as, for example:

-   -   (a) urban, hilly, high traffic at 5 pm, or     -   (b) rural, flat, heavy tree foliage density in summer may be         utilized as one skilled in the art will understand from the         descriptions contained hereinbelow.

Accordingly, the present disclosure is not limited to the factors explicitly mentioned here. That is, it is an aspect of the present disclosure to be extensible so that other environmental factors of the coverage area 120 affecting the accuracy of location hypotheses may also be incorporated into the context adjuster 1326.

It is also an aspect of the context adjuster 1326 that the methods for adjusting location hypotheses provided in this module may be generalized and thereby also utilized with multiple hypothesis computational architectures related to various applications wherein a terrain, surface, volume or other “geometric” interpretation (e.g., a metric space of statistical samples) may be placed on a large body of stored application data for relating hypothesized data to verified data. Moreover, it is important to note that various techniques for “visualizing data” may provide such a geometric interpretation. Thus, the methods herein may be utilized in applications such as:

-   -   (a) sonar, radar, x-ray or infrared identification of objects         such as occurs in robotic navigation, medical image analysis,         geological, and radar imaging.

More generally, the novel computational paradigm of the context adjuster 1326 may be utilized in a number of applications wherein there is a large body of archived information providing verified or actual application process data related to the past performance of the application process.

It is worth mentioning that the computational paradigm used in the context adjuster 1326 is a hybrid of a hypothesis adjuster and a data base query mechanism. For example, the context adjuster 1326 uses an input (location) hypothesis both as an hypothesis and as a data base query or index into the location signature data base 1320 for constructing a related but more accurate location hypothesis. Accordingly, substantial advantages are provided by this hybrid architecture, such as the following two advantages.

As a first advantage, the context adjuster 1326 reduces the likelihood that a feedback mechanism is necessary to the initial hypothesis generators (i.e., FOMs 1224) for periodically adjusting default evaluations of the goodness or confidence in the hypotheses generated. That is, since each hypothesis generated is, in effect, an index into a data base or archive of verified application (e.g., location) data, the context adjuster 1326, in turn, generates new corresponding hypotheses based on the actual or verified data retrieved from an archival data base. Thus, as a result, this architecture tends to separate the computations of the initial hypothesis generators (e.g., the FOMs 1224 in the present MS location application) from any further processing and thereby provide a more modular, maintainable and flexible computational system.

As a second advantage, the context adjuster 1326 tends to create hypotheses that are more accurate than the hypotheses generated by the initial hypotheses generators. That is, for each hypothesis, H, provided by one of the initial hypothesis generators, G (e.g., a FOM 1224), a corresponding enhanced hypothesis, provided by the context adjuster 1326, is generated by mapping the past performance of G into the archived verified application data (as will be discussed in detail hereinbelow). In particular, the context adjuster hypothesis generation is based on the archived verified (or known) performance application data that is related to both G and H. For example, in the present wireless location application, if a FOM 1224, G, substantially consistently generates, in a particular geographical area, location hypotheses that are biased approximately 1000 feet north of the actual verified MS 140 location, then the context adjuster 1326 can generate corresponding hypotheses without this bias. Thus, the context adjuster 1326 tends to filter out inaccuracies in the initially generated hypotheses.

Therefore in a multiple hypothesis architecture where typically the generated hypotheses may be evaluated and/or combined for providing a “most likely” result, it is believed that a plurality of relatively simple (and possibly inexact) initial hypothesis generators may be used in conjunction with the hybrid computational paradigm represented by the context adjuster 1326 for providing enhanced hypotheses with substantially greater accuracy.

Additionally, note that this hybrid paradigm applies to other domains that are not geographically based. For instance, this hybrid paradigm applies to many prediction and/or diagnostic applications for which:

(a) the application data and the application are dependent on a number of parameters whose values characterize the range of outputs for the application. That is, there is a set of parameters, p₁, p₂, p₃, . . . , p_(N) from which a parameter space p₁×p₂×p₃× . . . ×PN is derived whose points characterize the actual and estimated (or predicted) outcomes. As examples, in the MS location system, p₁=latitude and p₂=longitude;

(b) there is historical data from which points for the parameter space, p₁×p₂×p₃× . . . ×p_(N) can be obtained, wherein this data relates to (or indicates) the performance of the application, and the points obtained from this data are relatively dense in the space (at least around the likely future actual outcomes that the application is expected to predict or diagnose). For example, such historical data may associate the predicted outcomes of the application with corresponding actual outcomes;

(c) there is a metric or distance-like evaluation function that can be applied to the parameter space for indicating relative closeness or accuracy of points in the parameter space, wherein the evaluation function provides a measurement of closeness that is related to the actual performance of the application.

Note that there are numerous applications for which the above criteria are applicable. For instance, computer aided control of chemical processing plants are likely to satisfy the above criteria. Certain robotic applications may also satisfy this criteria. In fact, it is believed that a wide range of signal processing applications satisfy this criteria.

(H.4.1.2) MS Status Repository Introduction

The MS status repository 1338 is a run-time storage manager for storing location hypotheses from previous activations of the location engine 139 (as well as for storing the output “most likely” target MS location estimate(s)) so that a target MS 140 may be tracked using target MS location hypotheses from previous location engine 139 activations to determine, for example, a movement of the target MS 140 between evaluations of the target MS location.

(H.4.1.3) Location Hypothesis Analyzer Introduction.

The location hypothesis analyzer 1332, adjusts confidence values of the location hypotheses, according to:

-   -   (a) heuristics and/or statistical methods related to how well         the signal characteristics for the generated target MS location         hypothesis matches with previously obtained signal         characteristics for verified MS locations.     -   (b) heuristics related to how consistent the location hypothesis         is with physical laws, and/or highly probable reasonableness         conditions relating to the location of the target MS and its         movement characteristics. For example, such heuristics may         utilize knowledge of the geographical terrain in which the MS is         estimated to be, and/or, for instance, the MS velocity,         acceleration or extrapolation of an MS position, velocity, or         acceleration.     -   (c) generation of additional location hypotheses whose MS         locations are consistent with, for example, previous estimated         locations for the target MS.

As shown in FIGS. 6 and 7, the hypothesis analyzer 1332 module receives (potentially) modified location hypotheses from the context adjuster 1326 and performs additional location hypothesis processing that is likely to be common and generic in analyzing most location hypotheses. More specifically, the hypothesis analyzer 1332 may adjust either or both of the target MS 140 estimated location and/or the confidence of a location hypothesis. In brief, the hypothesis analyzer 1332 receives target MS 140 location hypotheses from the context analyzer 1336, and depending on the time stamps of newly received location hypotheses and any previous (i.e., older) target MS location hypotheses that may still be currently available to the hypothesis analyzer 1332, the hypothesis analyzer may:

-   -   (a) update some of the older hypotheses by an extrapolation         module,     -   (b) utilize some of the old hypotheses as previous target MS         estimates for use in tracking the target MS 140, and/or     -   (c) if sufficiently old, then delete the older location         hypotheses.

Note that both the newly received location hypotheses and the previous location hypotheses that are updated (i.e., extrapolated) and still remain in the hypothesis analyzer 1332 will be denoted as “current location hypotheses” or “currently active location hypotheses”.

The modules within the location hypothesis analyzer 1332 use various types of application specific knowledge likely substantially independent from the computations by the FOMs 1224 when providing the corresponding original location hypotheses. That is, since it is an aspect of at least one embodiment of the present disclosure that the FOMs 1224 be relatively straightforward so that they may be easily to modified as well as added or deleted, the processing, for example, in the hypothesis analyzer 1332 (as with the context adjuster 1326) is intended to compensate, when necessary, for this straightforwardness by providing substantially generic MS location processing capabilities that can require a greater breadth of application understanding related to wireless signal characteristics of the coverage area 120.

Accordingly, the hypothesis analyzer 1332 may apply various heuristics that, for example, change the confidence in a location hypothesis depending on how well the location hypothesis (and/or a series of location hypotheses from e.g., the same FOM 1224): (a) conforms with the laws of physics, (b) conforms with known characteristics of location signature clusters in an area of the location hypothesis MS 140 estimate, and (c) conforms with highly likely heuristic constraint knowledge. In particular, as illustrated best in FIG. 7, the location hypothesis analyzer 1332 may utilize at least one of a blackboard system and/or an expert system for applying various application specific heuristics to the location hypotheses output by the context adjuster 1326. More precisely, the location hypothesis analyzer 1332 includes, in one embodiment, a blackboard manager for managing processes and data of a blackboard system. Additionally, note that in a second embodiment, where an expert system is utilized instead of a blackboard system, the location hypothesis analyzer provides an expert system inference engine for the expert system. Note that additional detail on these aspects of the invention are provided hereinbelow.

Additionally, note that the hypothesis analyzer 1332 may activate one or more extrapolation procedures to extrapolate target MS 140 location hypotheses already processed. Thus, when one or more new location hypotheses are supplied (by the context adjuster 1224) having a substantially more recent timestamp, the hypothesis analyzer may invoke an extrapolation module (i.e., location extrapolator 1432, FIG. 7) for adjusting any previous location hypotheses for the same target MS 140 that are still being used by the location hypothesis analyzer so that all target MS location hypotheses (for the same target MS) being concurrently analyzed are presumed to be for substantially the same time. Accordingly, such a previous location hypothesis that is, for example, 15 seconds older than a newly supplied location hypothesis (from perhaps a different FOM 1224) may have both: (a) an MS location estimate changed (e.g., to account for a movement of the target MS), and (b) its confidence changed (e.g., to reflect a reduced confidence in the accuracy of the location hypothesis).

It is important to note that the architecture of the present disclosure is such that the hypothesis analyzer 1332 has an extensible architecture. That is, additional location hypothesis analysis modules may be easily integrated into the hypothesis analyzer 1332 as further understanding regarding the behavior of wireless signals within the service area 120 becomes available. Conversely, some analysis modules may not be required in areas having relatively predictable signal patterns. Thus, in such service areas, such unnecessary modules may be easily removed or not even developed.

(H.4.1.4) Most Likelihood Estimator Introduction

The most likelihood estimator 1344 is a module for determining a “most likely” location estimate for a target MS being located by the location engine 139. The most likelihood estimator 1344 receives a collection of active or relevant location hypotheses from the hypothesis analyzer 1332 and uses these location hypotheses to determine one or more most likely estimates for the target MS 140.

Still referring to the hypothesis evaluator 1228, it is important to note that not all the above mentioned modules are required in all embodiments of the present disclosure. In particular, for some coverage areas 120, the hypothesis analyzer 1332 may be unnecessary. Accordingly, in such an embodiment, the enhanced location hypotheses output by the context adjuster 1326 are provided directly to the most likelihood estimator 1344.

(H.5) Control and Output Gating Modules

A fourth functional group of location engine 139 modules is the control and output gating modules which includes the location center control subsystem 1350, and the output gateway 1356. The location control subsystem 1350 provides the highest level of control and monitoring of the data processing performed by the location center 142. In particular, this subsystem performs the following functions:

-   -   (a) controls and monitors location estimating processing for         each target MS 140. Note that this includes high level exception         or error handling functions;     -   (b) receives and routes external information as necessary. For         instance, this subsystem may receive (via, e.g., the public         telephone switching network 124 and Internet 468) such         environmental information as increased signal noise in a         particular service area due to increase traffic, a change in         weather conditions, a base station 122 (or other infrastructure         provisioning), change in operation status (e.g., operational to         inactive);     -   (c) receives and directs location processing requests from other         location centers 142 (via, e.g., the Internet 468);     -   (d) performs accounting and billing procedures;     -   (e) interacts with location center operators by, for example,         receiving operator commands and providing output indicative of         processing resources being utilized and malfunctions;     -   (f) provides access to output requirements for various         applications requesting location estimates. For example, an         Internet 468 location request from a trucking company in Los         Angeles to a location center 142 in Denver may only want to know         if a particular truck or driver is within the Denver area.         Alternatively, a local medical rescue unit is likely to request         as precise a location estimate as possible.

Note that in FIG. 6, (a)-(f) above are, at least at a high level, performed by utilizing the operator interface 1374.

Referring now to the output gateway 1356, this module routes target MS 140 location estimates to the appropriate location application(s). For instance, upon receiving a location estimate from the most likelihood estimator 1344, the output gateway 1356 may determine that the location estimate is for an automobile being tracked by the police and therefore must be provided according to a particular protocol.

(H.6) System Tuning and Adaptation: The Adaptation Engine

A fifth functional group of location engine 139 modules provides the ability to enhance the MS locating reliability and/or accuracy by providing it with the capability to adapt to particular operating configurations, operating conditions and wireless signaling environments without performing intensive manual analysis of the performance of various embodiments of the location engine 139. That is, this functional group automatically enhances the performance of the location engine for locating MSs 140 within a particular coverage area 120 using at least one wireless network infrastructure therein. More precisely, this functional group allows embodiments of the present disclosure to adapt by tuning or optimizing certain system parameters according to location engine 139 location estimate accuracy and reliability.

There are a number location engine 139 system parameters whose values affect location estimation, and it is an aspect of the present disclosure that the MS location processing performed should become increasingly better at locating a target MS 140 not only through building an increasingly more detailed model of the signal characteristics of location in the coverage area 120 such as discussed above regarding the location signature data base 1320, but also by providing automated capabilities for the location center processing to adapt by adjusting or “tuning” the values of such location center system parameters.

Accordingly, the present disclosure includes a module, denoted herein as an “adaptation engine” 1382, that performs an optimization procedure on the location center 142 system parameters either periodically or concurrently with the operation of the location center in estimating MS locations. That is, the adaptation engine 1382 directs the modifications of the system parameters so that the location engine 139 increases in overall accuracy in locating target MSs 140. In one embodiment, the adaptation engine 1382 includes an embodiment of a genetic algorithm as the mechanism for modifying the system parameters. Genetic algorithms are basically search algorithms based on the mechanics of natural genetics. The genetic algorithm utilized herein is included in the form of pseudo code in APPENDIX B. Note that to apply this genetic algorithm in the context of the location engine 139 architecture only a “coding scheme” and a “fitness function” are required as one skilled in the art will appreciate. Moreover, it is also within the scope of the present disclosure to use modified or different adaptive and/or tuning mechanisms. For further information regarding such adaptive mechanisms, the following references are incorporated herein by reference: Goldberg, D. E. (1989), “Genetic algorithms for search, optimization, and machine learning”, Reading, Mass.: Addison-Wesley Publishing Company; and Holland, J. H. (1975) “Adaptation in natural and artificial systems”, Ann Arbor, Mich.: The University of Michigan Press.

(I) Implementations of First Order Models

Further descriptions of various first order models 1224 are provided in this section.

(I.1) Distance First Order Models (e.g., TOA/TDOA/AOA)

As discussed in the Location Center Architecture Overview section herein above, distance models determine a presumed direction and/or distance that a target MS 140 is from one or more base stations 122. In some embodiments of distance models, the target MS location estimate(s) generated are obtained using radio signal analysis techniques that are quite general and therefore are not capable of taking into account the peculiarities of the topography of a particular radio coverage area. For example, substantially all radio signal analysis techniques using conventional procedures (or formulas) are based on “signal characteristic measurements” such as:

-   -   (a) signal timing measurements (e.g., TOA and TDOA),     -   (b) signal strength measurements, and/or     -   (c) signal angle of arrival measurements.         Furthermore, such signal analysis techniques are likely         predicated on certain very general assumptions that can not         fully account for signal attenuation and multipath due to a         particular radio coverage area topography.

Taking a CDMA or TDMA base station network as an example, each base station (BS) 122 is required to emit a constant signal-strength pilot channel pseudo-noise (PN) sequence on the forward link channel identified uniquely in the network by a pilot sequence offset and frequency assignment. It is possible to use the pilot channels of the active, candidate, neighboring and remaining sets, maintained in the target MS, for obtaining signal characteristic measurements (e.g., TOA and/or TDOA measurements) between the target MS 140 and the base stations in one or more of these sets.

Based on such signal characteristic measurements and the speed of signal propagation, signal characteristic ranges or range differences related to the location of the target MS 140 can be calculated. Using TOA and/or TDOA ranges as exemplary, these ranges can then be input to either the radius-radius multilateration or the time difference multilateration algorithms along with the known positions of the corresponding base stations 122 to thereby obtain one or more location estimates of the target MS 140. For example, if there are, four base stations 122 in the active set, the target MS 140 may cooperate with each of the base stations in this set to provide signal arrival time measurements. Accordingly, each of the resulting four sets of three of these base stations 122 may be used to provide an estimate of the target MS 140 as one skilled in the art will understand. Thus, potentially (assuming the measurements for each set of three base stations yields a feasible location solution) there are four estimates for the location of the target MS 140. Further, since such measurements and BS 122 positions can be sent either to the network or the target MS 140, location can be determined in either entity.

Since many of the signal measurements utilized by embodiments of distance models are subject to signal attenuation and multipath due to a particular area topography. Many of the sets of base stations from which target MS location estimates are desired may result in either no location estimate, or an inaccurate location estimate.

Accordingly, some embodiments of distance FOMs may attempt to mitigate such ambiguity or inaccuracies by, e.g., identifying discrepancies (or consistencies) between arrival time measurements and other measurements (e.g., signal strength), these discrepancies (or consistencies) may be used to filter out at least those signal measurements and/or generated location estimates that appear less accurate. In particular, such identifying by filtering can be performed by, for example, an expert system residing in the distance FOM.

A second approach for mitigating such ambiguity or conflicting MS location estimates is particularly novel in that each of the target MS location estimates is used to generate a location hypothesis regardless of its apparent accuracy. Accordingly, these location hypotheses are input to an alternative embodiment of the context adjuster 1326 that is substantially (but not identical to) the context adjuster as described in detail in APPENDIX D so that each location hypothesis may be adjusted to enhance its accuracy. In contradistinction to the embodiment of the context adjuster 1326 of APPENDIX D, where each location hypothesis is adjusted according to past performance of its generating FOM 1224 in an area of the initial location estimate of the location hypothesis (the area, e.g., determined as a function of distance from this initial location estimate), this alternative embodiment adjusts each of the location hypotheses generated by a distance first order model according to a past performance of the model as applied to signal characteristic measurements from the same set of base stations 122 as were used in generating the location hypothesis. That is, instead of only using only an identification of the distance model (i.e., its FOM_ID) to, for example, retrieve archived location estimates generated by the model in an area of the location hypothesis' estimate (when determining the model's past performance), the retrieval retrieves only the archived location estimates that are, in addition, derived from the signal characteristics measurement obtained from the same collection of base stations 122 as was used in generating the location hypothesis. Thus, the adjustment performed by this embodiment of the context adjuster 1326 adjusts according to the past performance of the distance model and the collection of base stations 122 used.

(I.2) Coverage Area First Order Model

Radio coverage area of individual base stations 122 may be used to generate location estimates of the target MS 140. Although a first order model 1224 based on this notion may be less accurate than other techniques, if a reasonably accurate RF coverage area is known for each (or most) of the base stations 122, then such a FOM (denoted hereinafter as a “coverage area first order model” or simply “coverage area model”) may be very reliable. To determine approximate maximum radio frequency (RF) location coverage areas, with respect to BSs 122, antennas and/or sector coverage areas, for a given class (or classes) of (e.g., CDMA or TDMA) mobile station(s) 140, location coverage should be based on an MS's ability to adequately detect the pilot channel, as opposed to adequate signal quality for purposes of carrying user-acceptable traffic in the voice channel. Note that more energy is necessary for traffic channel activity (typically on the order of at least −94 to −104 dBm received signal strength) to support voice, than energy needed to simply detect a pilot channel's presence for location purposes (typically a maximum weakest signal strength range of between −104 to −110 dBm), thus the “Location Coverage Area” will generally be a larger area than that of a typical “Voice Coverage Area”, although industry studies have found some occurrences of “no-coverage” areas within a larger covered area. An example of a coverage area including both a “dead zone”, i.e., area of no coverage, and a “notch” (of also no coverage) is shown in FIG. 15.

The approximate maximum RF coverage area for a given sector of (more generally angular range about) a base station 122 may be represented as a set of points representing a polygonal area (potentially with, e.g., holes therein to account for dead zones and/or notches). Note that if such polygonal RF coverage area representations can be reliably determined and maintained over time (for one or more BS signal power level settings), then such representations can be used in providing a set theoretic or Venn diagram approach to estimating the location of a target MS 140. Coverage area first order models utilize such an approach.

In one embodiment, a coverage area model utilizes both the detection and non-detection of base stations 122 by the target MS 140 (conversely, of the MS by one or more base stations 122) to define an area where the target MS 140 may likely be. A relatively straightforward application of this technique is to:

-   -   (a) find all areas of intersection for base station RF coverage         area representations, wherein: (i) the corresponding base         stations are on-line for communicating with MSs 140; (ii) the RF         coverage area representations are deemed reliable for the power         levels of the on-line base stations; (iii) the on-line base         stations having reliable coverage area representations can be         detected by the target MS; and (iv) each intersection must         include a predetermined number of the reliable RF coverage area         representations (e.g., 2 or 3); and     -   (b) obtain new location estimates by subtracting from each of         the areas of intersection any of the reliable RF coverage area         representations for base stations 122 that can not be detected         by the target MS.

Accordingly, the new areas may be used to generate location hypotheses.

(I.5) Location Base Station First Order Model

In the location base station (LBS) model (FOM 1224), a database is accessed which contains electrical, radio propagation and coverage area characteristics of each of the location base stations in the radio coverage area. The LBS model is an active model, in that it can probe or excite one or more particular LBSs 152 in an area for which the target MS 140 to be located is suspected to be placed. Accordingly, the LBS model may receive as input a most likely target MS 140 location estimate previously output by the location engine 139 of the present disclosure, and use this location estimate to determine which (if any) LBSs 152 to activate and/or deactivate for enhancing a subsequent location estimate of the target MS. Moreover, the feedback from the activated LBSs 152 may be provided to other FOMs 1224, as appropriate, as well as to the LBS model. However, it is an important aspect of the LBS model that when it receives such feedback, it may output location hypotheses having relatively small target MS 140 location area estimates about the active LBSs 152 and each such location hypothesis also has a high confidence value indicative of the target MS 140 positively being in the corresponding location area estimate (e.g., a confidence value of 0.9 to +1), or having a high confidence value indicative of the target MS 140 not being in the corresponding location area estimate (i.e., a confidence value of −0.9 to −1). Note that in some embodiments of the LBS model, these embodiments may have functionality similar to that of the coverage area first order model described above. Further note that for LBSs within a neighborhood of the target MS wherein there is a reasonable chance that with movement of the target MS may be detected by these LBSs, such LBSs may be requested to periodically activate. (Note, that it is not assumed that such LBSs have an on-line external power source; e.g., some may be solar powered). Moreover, in the case where an LBS 152 includes sufficient electronics to carry voice communication with the target MS 140 and is the primary BS for the target MS (or alternatively, in the active or candidate set), then the LBS model will not deactivate this particular LBS during its procedure of activating and deactivating various LBSs 152.

(I.6) Stochastic First Order Model

The stochastic first order models may use statistical prediction techniques such as principle decomposition, partial least squares, or other regression techniques for predicting, for example, expected minimum and maximum distances of the target MS from one or more base stations 122, e.g., Bollenger Bands. Additionally, some embodiments may use Markov processes and Random Walks (predicted incremental MS movement) for determining an expected area within which the target MS 140 is likely to be. That is, such a process measures the incremental time differences of each pilot as the MS moves for predicting a size of a location area estimate using past MS estimates such as the verified location signatures in the location signature data base 1320.

(I.7) Pattern Recognition and Adaptive First Order Models

It is a particularly important aspect of the present disclosure to provide:

-   -   (a) one or more FOMs 1224 that generate target MS 140 location         estimates by using pattern recognition or associativity         techniques, and/or     -   (b) one or more FOMs 1224 that are adaptive or trainable so that         such FOMs may generate increasingly more accurate target MS         location estimates from additional training.

(I.7.1) Statistically Based Pattern Recognition First Order Models

Regarding FOMs 1224 using pattern recognition or associativity techniques, there are many such techniques available. For example, there are statistically based systems such as “CART” (an acronym for Classification and Regression Trees) by ANGOSS Software International Limited of Toronto, Canada that may be used for automatically detecting or recognizing patterns in data that were unprovided (and likely previously unknown). Accordingly, by imposing a relatively fine mesh or grid of cells on the radio coverage area, wherein each cell is entirely within a particular area type categorization such as the transmission area types (discussed in the section, “Coverage Area: Area Types And Their Determination” above), the verified location signature clusters within the cells of each area type may be analyzed for signal characteristic patterns. Accordingly, if such characteristic pattern is found, then it can be used to identify at least a likely area type in which a target MS is likely to be located. That is, one or more location hypotheses may be generated having target MS 140 location estimates that cover an area having the likely area type wherein the target MS 140 is located. Further note that such statistically based pattern recognition systems as “CART” include software code generators for generating expert system software embodiments for recognizing the patterns detected within a training set (e.g., the verified location signature clusters).

Accordingly, although an embodiment of a FOM as described here may not be exceedingly accurate, it may be very reliable. Thus, since a fundamental aspect of the present disclosure is to use a plurality MS location techniques for generating location estimates and to analyze the generated estimates (likely after being adjusted) to detect patterns of convergence or clustering among the estimates, even large MS location area estimates are useful. For example, it can be the case that four different and relatively large MS location estimates, each having very high reliability, have an area of intersection that is acceptably precise and inherits the very high reliability from each of the large MS location estimates from which the intersection area was derived.

A similar statistically based FOM 1224 to the one above may be provided wherein the radio coverage area is decomposed substantially as above, but in addition to using the signal characteristics for detecting useful signal patterns, the specific identifications of the base station 122 providing the signal characteristics may also be used. Thus, assuming there is a sufficient density of verified location signature clusters in some of the mesh cells so that the statistical pattern recognizer can detect patterns in the signal characteristic measurements, an expert system may be generated that outputs a target MS 140 location estimate that may provide both a reliable and accurate location estimate of a target MS 140.

(I.7.2) Adaptive/Trainable First Order Models

The term adaptive is used to describe a data processing component that can modify its data processing behavior in response to certain inputs that are used to change how subsequent inputs are processed by the component. Accordingly, a data processing component may be “explicitly adaptive” by modifying its behavior according to the input of explicit instructions or control data that is input for changing the component's subsequent behavior in ways that are predictable and expected. That is, the input encodes explicit instructions that are known by a user of the component. Alternatively, a data processing component may be “implicitly adaptive” in that its behavior is modified by other than instructions or control data whose meaning is known by a user of the component. For example, such implicitly adaptive data processors may learn by training on examples, by substantially unguided exploration of a solution space, or other data driven adaptive strategies such as statistically generated decision trees. Accordingly, it is an aspect of the present disclosure to utilize not only explicitly adaptive MS location estimators within FOMs 1224, but also implicitly adaptive MS location estimators. In particular, artificial neural networks (also denoted neural nets and ANNs herein) are used in some embodiments as implicitly adaptive MS location estimators within FOMs. Thus, in the sections below, neural net architectures and their application to locating an MS is described.

(I.7.3) Artificial Neural Networks For MS Location

Artificial neural networks may be particularly useful in developing one or more first order models 1224 for locating an MS 140, since, for example, ANNs can be trained for classifying and/or associatively pattern matching of various RF signal measurements such as the location signatures. That is, by training one or more artificial neural nets using RF signal measurements from verified locations so that RF signal transmissions characteristics indicative of particular locations are associated with their corresponding locations, such trained artificial neural nets can be used to provide additional target MS 140 location hypotheses. Moreover, it is an aspect of the present disclosure that the training of such artificial neural net based FOMs (ANN FOMs) is provided without manual intervention as will be discussed hereinbelow.

(I.7.3.1) Artificial Neural Networks That Converge on Near Optimal Solutions

It is as an aspect of the present disclosure to use an adaptive neural network architecture which has the ability to explore the parameter or matrix weight space corresponding to a ANN for determining new configurations of weights that reduce an objective or error function indicating the error in the output of the ANN over some aggregate set of input data ensembles. Accordingly, in one embodiment, a genetic algorithm is used to provide such an adaptation capability. However, it is also within the scope of the present disclosure to use other adaptive techniques such as, for example, simulated annealing, cascade correlation with multistarts, gradient descent with multistarts, and truncated Newton's method with multistarts, as one skilled in the art of neural network computing will understand.

(I.7.3.2) Artificial Neural Networks as MS Location Estimators for First Order Models

Although there have been substantial advances in artificial neural net computing in both hardware and software, it can be difficult to choose a particular ANN architecture and appropriate training data for yielding high quality results. In choosing a ANN architecture at least the following three criteria are chosen (either implicitly or explicitly):

-   -   (a) a learning paradigm: i.e., does the ANN require supervised         training (i.e., being provided with indications of correct and         incorrect performance), unsupervised training, or a hybrid of         both (sometimes referred to as reinforcement);     -   (b) a collection of learning rules for indicating how to update         the ANN;     -   (c) a learning algorithm for using the learning rules for         adjusting the ANN weights.         Furthermore, there are other implementation issues such as:     -   (d) how many layers a artificial neural net should have to         effectively capture the patterns embedded within the training         data. For example, the benefits of using small ANN are many.         less costly to implement, faster, and tend to generalize better         because they avoid overfitting weights to training patterns.         That is, in general, more unknown parameters (weights) induce         more local and global minima in the error surface or space.         However, the error surface of smaller nets can be very rugged         and have few good solutions, making it difficult for a local         minimization algorithm to find a good solution from a random         starting point as one skilled in the art will understand;     -   (e) how many units or neurons to provide per layer;     -   (f) how large should the training set be presented to provide         effective generalization to non-training data     -   (g) what type of transfer functions should be used.

However, the architecture of the present disclosure allows substantial flexibility in the implementation of ANN for FOMs 1224. In particular, there is no need to choose only one artificial neural net architecture and/or implementation in that a plurality of ANNs may be accommodated by the architecture of the location engine 139. Furthermore, it is important to keep in mind that it may not be necessary to train an ANN for a FOM as rigorously as is done in typical ANN applications since the accuracy and reliability in estimating the location of a target MS 140 with an embodiment of the present disclosure may come from synergistically utilizing a plurality of different MS location estimators, each of which may be undesirable in terms of accuracy and/or reliability in some areas, but when their estimates are synergistically used as in the location engine 139, accurate and reliable location estimates can be attained. Accordingly, one embodiment of the present disclosure may have a plurality of moderately well trained ANNs having different neural net architectures such as: multilayer perceptrons, adaptive resonance theory models, and radial basis function networks.

Additionally, many of the above mentioned ANN architecture and implementation decisions can be addressed substantially automatically by various commercial artificial neural net development systems such as: “NEUROGENETIC OPTIMIZER” by BioComp Systems Inc., 4018 148th Ave. NE, Redmond, Wash. 98052,USA wherein genetic algorithms are used to optimize and configure ANNs, and artificial neural network hardware and software products by Accurate Automation Corporation of Chattanooga, Tenn., such as “ACCURATE AUTOMATION NEURAL NETWORK TOOLS.

(I.7.3.3) Artificial Neural Network Input and Output

It is worthwhile to discuss the data representations for the inputs and outputs of a ANN used for generating MS location estimates. Regarding ANN input representations, recall that the signal processing subsystem 1220 may provide various RF signal measurements as input to an ANN (such as the RF signal measurements derived from verified location signatures in the location signature data base 1320). For example, a representation of a histogram of the frequency of occurrence of CDMA fingers in a time delay versus signal strength 2-dimensional domain may be provided as input to such an ANN. In particular, a 2-dimensional grid of signal strength versus time delay bins may be provided so that received signal measurements are slotted into an appropriate bin of the grid. In one embodiment, such a grid is a six by six array of bins such as illustrated in the left portion of FIG. 14. That is, each of the signal strength and time delay axes are partitioned into six ranges so that both the signal strength and the time delay of RF signal measurements can be slotted into an appropriate range, thus determining the bin.

Note that RF signal measurement data (i.e., location signatures) slotted into a grid of bins provides a convenient mechanism for classifying RF measurements received over time so that when each new RF measurement data is assigned to its bin, a counter for the bin can be incremented. Thus in one embodiment, the RF measurements for each bin can be represented pictorially as a histogram. In any case, once the RF measurements have been slotted into a grid, various filters may be applied for filtering outliers and noise prior to inputting bin values to an ANN. Further, various amounts of data from such a grid may be provided to an ANN. In one embodiment, the tally from each bin is provided to an ANN. Thus, as many as 108 values could be input to the ANN (two values defining each bin, and a tally for the bin). However, other representations are also possible. For instance, by ordering the bin tallies linearly, only 36 need be provided as ANN input. Alternatively, only representations of bins having the highest tallies may be provided as ANN input. Thus, for example, if the highest 10 bins and their tallies were provided as ANN input, then only 20 inputs need be provided (i.e., 10 input pairs, each having a single bin identifier and a corresponding tally).

In addition, note that the signal processing subsystem 1220 may also obtain the identifications of other base stations 122 (152) for which their pilot channels can be detected by the target MS 140 (i.e., the forward path), or for which the base stations can detect a signal from the target MS (i.e., the reverse path). Thus, in order to effectively utilize substantially all pertinent location RF signal measurements (i.e., from location signature data derived from communications between the target MS 140 and the base station infrastructure), a technique is provided wherein a plurality of ANNs may be activated using various portions of an ensemble of location signature data obtained. However, before describing this technique, it is worthwhile to note that a naive strategy of providing input to a single ANN for locating target MSs throughout an area having a large number of base stations (e.g., 300) is likely to be undesirable. That is, given that each base station (antenna sector) nearby the target MS is potentially able to provide the ANN with location signature data, the ANN would have to be extremely large and therefore may require inordinate training and retraining. For example, since there may be approximately 30 to 60 ANN inputs per location signature, an ANN for an area having even twenty base stations 122 can require at least 600 input neurons, and potentially as many as 1,420 (i.e., 20 base stations with 70 inputs per base station and one input for every one of possibly 20 additional surrounding base stations in the radio coverage area 120 that might be able to detect, or be detected by, a target MS 140 in the area corresponding to the ANN).

(I.7.3.3.1) ANN Input

Accordingly, the technique described herein limits the number of input neurons in each ANN constructed and generates a larger number of these smaller ANNs. That is, each ANN is trained on location signature data (or, more precisely, portions of location signature clusters) in an area A_(ANN) (hereinafter also denoted the “net area”), wherein each input neuron receives a unique input from one of:

-   (A1) location signature data (e.g., signal strength/time delay bin     tallies) corresponding to transmissions between an MS 140 and a     relatively small number of base stations 122 in the area A_(ANN) For     instance, location signature data obtained from, for example, a     collection B of four base stations 122 (or antenna sectors) in the     area A_(ANN)., Note, each location signature data cluster includes     fields describing the wireless communication devices used; e.g., (i)     the make and model of the target MS; (ii) the current and maximum     transmission power; (iii) the MS battery power (instantaneous or     current); (iv) the base station (sector) current power level; (v)     the base station make and model and revision level; (vi) the air     interface type and revision level (of, e.g., CDMA, TDMA or AMPS). -   (A2) a discrete input corresponding to each base station 122 (or     antenna sector 130) in a larger area containing A_(ANN), wherein     each such input here indicates whether the corresponding base     station (sector):     -   (i) is on-line (i.e., capable of wireless communication with         MSs) and at least its pilot channel signal is detected by the         target MS 140, but the base station (sector) does not detect the         target MS;     -   (ii) is on-line and the base station (sector) detects a wireless         transmission from the target MS, but the target MS does not         detect the base station (sector) pilot channel signal;     -   (iii) is on-line and the base station (sector) detects the         target MS and the base station (sector) is detected by the         target MS;     -   (iv) is on-line and the base station (sector) does not detect         the target MS, the base station is not detected by the target         MS; or     -   (v) is off-line (i.e., incapable of wireless communication with         one or more MSs).         Note that (i)-(v) are hereinafter referred to as the “detection         states.”

Thus, by generating an ANN for each of a plurality of net areas (potentially overlapping), a local environmental change in the wireless signal characteristics of one net area is unlikely to affect more than a small number of adjacent or overlapping net areas. Accordingly, such local environmental changes can be reflected in that only the ANNs having net areas affected by the local change need to be retrained. Additionally, note that in cases where RF measurements from a target MS 140 are received across multiple net areas, multiple ANNs may be activated, thus providing multiple MS location estimates. Further, multiple ANNs may be activated when a location signature cluster is received for a target MS 140 and location signature cluster includes location signature data corresponding to wireless transmissions between the MS and, e.g., more base stations (antenna sectors) than needed for the collection B described in the previous section. That is, if each collection B identifies four base stations 122 (antenna sectors), and a received location signature cluster includes location signature data corresponding to five base stations (antenna sectors), then there may be up to five ANNs activated to each generate a location estimate.

Moreover, for each of the smaller ANNs, it is likely that the number of input neurons is on the order of 330; (i.e., 70 inputs per each of four location signatures (i.e., 35 inputs for the forward wireless communications and 35 for the reverse wireless communications), plus 40 additional discrete inputs for an appropriate area surrounding A_(ANN), plus 10 inputs related to: the type of MS, power levels, etc. However, it is important to note that the number of base stations (or antenna sectors 130) having corresponding location signature data to be provided to such an ANN may vary. Thus, in some subareas of the coverage area 120, location signature data from five or more base stations (antenna sectors) may be used, whereas in other subareas three (or less) may be used.

Regarding the output from ANNs used in generating MS location estimates, there are also numerous options. In one embodiment, two values corresponding to the latitude and longitude of the target MS are estimated. Alternatively, by applying a mesh to the coverage area 120, such ANN output may be in the form of a row value and a column value of a particular mesh cell (and its corresponding area) where the target MS is estimated to be. Note that the cell sizes of the mesh need not be of a particular shape nor of uniform size. However, simple non-oblong shapes are desirable. Moreover, such cells should be sized so that each cell has an area approximately the size of the maximum degree of location precision desired. Thus, assuming square mesh cells, 250 to 350 feet per cell side in an urban/suburban area, and 500 to 700 feet per cell side in a rural area may be desirable.

(I.7.3.4) Artificial Neural Network Training

The following are steps provide one embodiment for training a location estimating ANN according to the present disclosure.

-   -   (a) Determine a collection, C, of clusters of RF signal         measurements (i.e., location signatures) such that each cluster         is for RF transmissions between an MS 140 and a common set, B,         of base stations 122 (or antenna sectors 130) such measurements         are as described in (A1) above. In one embodiment, the         collection C is determined by interrogating the location         signature data base 1320 for verified location signature         clusters stored therein having such a common set B of base         stations (antenna sectors). Alternatively in another embodiment,         note that the collection C may be determined from (i) the         existing engineering and planning data from service providers         who are planning wireless cell sites, or (ii) service provider         test data obtained using mobile test sets, access probes or         other RF field measuring devices. Note that such a collection B         of base stations (antenna sectors) should only be created when         the set C of verified location signature clusters is of a         sufficient size so that it is expected that the ANN can be         effectively trained.     -   (b) Determine a collection of base stations (or antenna sectors         130), B′, from the common set B, wherein B′ is small (e.g., four         or five).     -   (c) Determine the area, A_(ANN), to be associated with         collection B′ of base stations (antenna sectors). In one         embodiment, this area is selected by determining an area         containing the set L of locations of all verified location         signature clusters determined in step (a) having location         signature data from each of the base stations (antenna sectors)         in the collection B′. More precisely, the area, A_(ANN), may be         determined by providing a covering of the locations of L, such         as, e.g., by cells of a mesh of appropriately fine mesh size so         that each cell is of a size not substantially larger than the         maximum MS location accuracy desired.     -   (d) Determine an additional collection, b, of base stations that         have been previously detected (and/or are likely to be detected)         by at least one MS in the area A_(ANN).     -   (e) Train the ANN on input data related to: (i) signal         characteristic measurements of signal transmissions between MSs         140 at verified locations in A_(ANN), and the base stations         (antenna sectors) in the collection B′, and (ii) discrete inputs         of detection states from the base stations represented in the         collection b. For example, train the ANN on input including: (i)         data from verified location signatures from each of the base         stations (antenna sectors) in the collection B′, wherein each         location signature is part of a cluster in the collection         C; (ii) a collection of discrete values corresponding to other         base stations (antenna sectors) in the area b containing the         area, A_(ANN).

Regarding (d) immediately above, less accuracy may be required in training an ANN used for generating a location hypothesis (in a FOM 1224) for the present invention than in most applications of ANNs (or other trainable/adaptive components) since, in most circumstances, when signal measurements are provided for locating a target MS 140, the location engine 139 will activate a plurality location hypothesis generating modules (corresponding to one or more FOMs 1224) for substantially simultaneously generating a plurality of different location estimates (i.e., hypotheses). Thus, instead of training each ANN so that it is expected to be, e.g., 92% or higher in accuracy, it is believed that synergies with MS location estimates from other location hypothesis generating components will effectively compensate for any reduced accuracy in such a ANN (or any other location hypothesis generating component). Accordingly, it is believed that training time for such ANNs may be reduced without substantially impacting the MS locating performance of the location engine 139.

(I.7.3.5) Finding Near-Optimal Location Estimating Artificial Neural Networks

In one traditional artificial neural network training process, a relatively tedious set of trial and error steps may be performed for configuring an ANN so that training produces effective learning. In particular, an ANN may require configuring parameters related to, for example, input data scaling, test/training set classification, detecting and removing unnecessary input variable selection. However, an embodiment of the present disclosure reduces this tedium. That is, an embodiment of the present disclosure uses mechanisms such as genetic algorithms or other mechanisms for avoiding non-optimal but locally appealing (i.e., local minimum) solutions, and locating near-optimal solutions instead. In particular, such mechanism may be used to adjust the matrix of weights for the ANNs so that very good, near optimal ANN configurations may be found efficiently. Furthermore, since the signal processing system 1220 uses various types of signal processing filters for filtering the RF measurements received from transmissions between an MS 140 and one or more base stations (antenna sectors 130), such mechanisms for finding near-optimal solutions may be applied to selecting appropriate filters as well. Accordingly, in one embodiment of the present disclosure, such filters are paired with particular ANNs so that the location signature data supplied to each ANN is filtered according to a corresponding “filter description” for the ANN, wherein the filter description specifies the filters to be used on location signature data prior to inputting this data to the ANN. In particular, the filter description can define a pipeline of filters having a sequence of filters wherein for each two consecutive filters, f₁ and f₂ (f₁ preceding f₂), in a filter description, the output of f₁ flows as input to f₂. Accordingly, by encoding such a filter description together with its corresponding ANN so that the encoding can be provided to a near optimal solution finding mechanism such as a genetic algorithm, it is believed that enhanced ANN locating performance can be obtained. That is, the combined genetic codes of the filter description and the ANN are manipulated by the genetic algorithm in a search for a satisfactory solution (i.e., location error estimates within a desired range). This process and system provides a mechanism for optimizing not only the artificial neural network architecture, but also identifying a near optimal match between the ANN and one or more signal processing filters. Accordingly, the following filters may be used in a filter pipeline of a filter description: Sobel, median, mean, histogram normalization, input cropping, neighbor, Gaussian, Weiner filters.

One embodiment for implementing the genetic evolving of filter description and ANN pairs is provided by the following steps that may automatically performed without substantial manual effort:

(Step 1) Create an initial population of concatenated genotypes, or genetic representations for each pair of an artificial neural networks and corresponding filter description pair. Also, provide seed parameters which guide the scope and characterization of the artificial neural network architectures, filter selection and parameters, genetic parameters and system control parameters. (Step 2) Prepare the input or training data, including, for example, any scaling and normalization of the data. (Step 3) Build phenotypes, or artificial neural network/filter description combinations based on the genotypes. (Step 4) Train and test the artificial neural network/filter description phenotype combinations to determine fitness; e.g., determine an aggregate location error measurement for each network/filter description phenotype. (Step 5) Compare the fitnesses and/or errors, and retain the best network/filter description phenotypes. (Step 6) Select the best networks/filter descriptions in the phenotype population (i.e., the combinations with small errors). (Step 7) Repopulate the population of genotypes for the artificial neural networks and the filter descriptions back to a predetermined size using the selected phenotypes. (Step 8) Combine the artificial neural network genotypes and filter description genotypes thereby obtaining artificial neural network/filter combination genotypes. (Step 9) Mate the combination genotypes by exchanging genes or characteristics/features of the network/ filter combinations. (Step 10) If system parameter stopping criteria is not satisfied, return to step 3.

Note that artificial neural network genotypes may be formed by selecting various types of artificial neural network architectures suited to function approximation, such as fast back propagation, as well as characterizing several varieties of candidate transfer/activation functions, such as Tanh, logistic, linear, sigmoid and radial basis. Furthermore, ANNs having complex inputs may be selected (as determined by a filter type in the signal processing subsystem 1220) for the genotypes.

Examples of genetic parameters include: (a) maximum population size (typical default: 300), (b) generation limit (typical default: 50), (c) selection criteria, such as a certain percentage to survive (typical default: 0.5) or roulette wheel, (d) population refilling, such as random or cloning (default), (e) mating criteria, such as tail swapping (default) or two cut swapping, (f) rate for a choice of mutation criterion, such as random exchange (default: 0.25) or section reversal, (g) population size of the concatenated artificial neural network/filter combinations, (h) use of statistical seeding on the initial population to bias the random initialization toward stronger first order relating variables, and (i) neural node influence factors, e.g., input nodes and hidden nodes. Such parameters can be used as weighting factors that influences the degree the system optimizes for accuracy versus network compactness. For example, an input node factor greater than 0 provides a means to reward artificial neural networks constructed that use fewer input variables (nodes). A reasonable default value is 0.1 for both input and hidden node factors.

Examples of neural net/filter description system control parameters include: (a) accuracy of modeling parameters, such as relative accuracy, R-squared, mean squared error, root mean squared error or average absolute error (default), and (b) stopping criteria parameters, such as generations run, elapsed time, best accuracy found and population convergence.

(I.7.3.6) Locating a Mobile Station Using Artificial Neural Networks

When using an artificial neural network for estimating a location of an MS 140, it is important that the artificial neural network be provided with as much accurate RF signal measurement data regarding signal transmissions between the target MS 140 and the base station infrastructure as possible. In particular, assuming ANN inputs as described hereinabove, it is desirable to obtain the detection states of as many surrounding base stations as possible. Thus, whenever the location engine 139 is requested to locate a target MS 140 (and in particular in an emergency context such as an emergency 911 call), the location center 140 automatically transmits a request to the wireless infrastructure to which the target MS is assigned for instructing the MS to raise its transmission power to full power for a short period of time (e.g., 100 milliseconds in a base station infrastructure configuration an optimized for such requests to 2 seconds in a non-optimized configuration). Note that the request for a change in the transmission power level of the target MS has a further advantage for location requests such as emergency 911 that are initiated from the MS itself in that a first ensemble of RF signal measurements can be provided to the location engine 139 at the initial 911 calling power level and then a second ensemble of RF signal measurements can be provided at a second higher transmission power level. Thus, in one embodiment of the present disclosure, an artificial neural network can be trained not only on the location signature cluster derived from either the initial wireless 911 transmissions or the full power transmissions, but also on the differences between these two transmissions. In particular, the difference in the detection states of the discrete ANN inputs between the two transmission power levels may provide useful additional information for more accurately estimating a location of a target MS.

It is important to note that when gathering RF signal measurements from a wireless base station network for locating MSs, the network should not be overburdened with location related traffic. Accordingly, note that network location data requests for data particularly useful for ANN based FOMs is generally confined to the requests to the base stations in the immediate area of a target MS 140 whose location is desired. For instance, both collections of base stations B′ and b discussed in the context of training an ANN are also the same collections of base stations from which MS location data would be requested. Thus, the wireless network MS location data requests are data driven in that the base stations to queried for location data (i.e., the collections B′ and b) are determined by previous RF signal measurement characteristics recorded. Accordingly, the selection of the collections B′ and b are adaptable to changes in the wireless environmental characteristics of the coverage area 120.

(J) Location Signature Data Base

Before proceeding with a description of other levels of the present disclosure as described in (24.1) through (24.3) above, in this section further detail is provided regarding the location signature data base 1320. Note that a brief description of the location signature data base was provided above indicating that this data base stores MS location data from verified and/or known locations (optionally with additional known environmental characteristic values) for use in enhancing current target MS location hypotheses and for comparing archived location data with location signal data obtained from a current target MS. However, the data base management system functionality incorporated into the location signature data base 1320 is an important aspect of the present disclosure, and is therefore described in this section. In particular, the data base management functionality described herein addresses a number of difficulties encountered in maintaining a large archive of signal processing data such as MS signal location data. Some of these difficulties can be described as follows:

-   -   (a) in many signal processing contexts, in order to effectively         utilize archived signal processing data for enhancing the         performance of a related signal processing application, there         must be an large amount of signal related data in the archive,         and this data must be adequately maintained so that as archived         signal data becomes less useful to the corresponding signal         processing application (i.e., the data becomes “inapplicable”)         its impact on the application should be correspondingly reduced.         Moreover, as archive data becomes substantially inapplicable, it         should be filtered from the archive altogether. However, the         size of the data in the archive makes it prohibitive for such a         process to be performed manually, and there may be no simple or         straightforward techniques for automating such impact reduction         or filtering processes for inapplicable signal data;     -   (b) it is sometimes difficult to determine the archived data to         use in comparing with newly obtained signal processing         application data; and     -   (c) it is sometimes difficult to determine a useful technique         for comparing archived data with newly obtained signal         processing application data.

It is an aspect of the present disclosure that the data base management functionality of the location signature data base 1320 addresses each of the difficulties mentioned immediately above. For example, regarding (a), the location signature data base is “self cleaning” in that by associating a confidence value with each loc sig in the data base and by reducing or increasing the confidences of archived verified loc sigs according to how well their signal characteristic data compares with newly received verified location signature data, the location signature data base 1320 maintains a consistency with newly verified loc sigs.

The following data base management functional descriptions describe some of the more noteworthy functions of the location signature data base 1320. Note that there are various ways that these functions may be embodied. So as to not overburden the reader here, the details for one embodiment is provided in APPENDIX C. FIGS. 16 a through 16 c present a table providing a brief description of the attributes of the location signature data type stored in the location signature data base 1320.

(J.1) Location Signature Program Descriptions

The following program updates the random loc sigs in the location signature data base 1320. In one embodiment, this program is invoked primarily by the Signal Processing Subsystem.

(J.1.1) Update Location signature Database Program Update_Loc_Sig_DB(new loc_obj, selection_criteria, loc_sig_pop)

-   -   /* This program updates loc sigs in the location signature data         base 1320. That is, this program updates, for example, at least         the location information for verified random loc sigs residing         in this data base. The general strategy here is to use         information (i.e., “new_loc_obj”) received from a newly verified         location (that may not yet be entered into the location         signature data base) to assist in determining if the previously         stored random verified loc sigs are still reasonably valid to         use for:         -   (29.1) estimating a location for a given collection (i.e.,             “bag”) of wireless (e.g., CDMA) location related signal             characteristics received from an MS,         -   (29.2) training (for example) adaptive location estimators             (and location hypothesizing models), and         -   (29.3) comparing with wireless signal characteristics used             in generating an MS location hypothesis by one of the MS             location hypothesizing models (denoted First Order Models,             or, FOMs).     -   More precisely, since it is assumed that it is more likely that         the newest location information obtained is more indicative of         the wireless (CDMA) signal characteristics within some area         surrounding a newly verified location than the verified loc sigs         (location signatures) previously entered into the Location         Signature data base, such verified loc sigs are compared for         signal characteristic consistency with the newly verified         location information (object) input here for determining whether         some of these “older” data base verified loc sigs still         appropriately characterize their associated location.         -   In particular, comparisons are iteratively made here between             each (target) loc sig “near” “new loc_obj” and a population             of loc sigs in the location signature data base 1320 (such             population typically including the loc sig for “new_loc_obj)             for:         -   (29.4) adjusting a confidence factor of the target loc sig.             Note that each such confidence factor is in the range [0, 1]             with 0 being the lowest and 1 being the highest. Further             note that a confidence factor here can be raised as well as             lowered depending on how well the target loc sig matches or             is consistent with the population of loc sigs to which it is             compared. Thus, the confidence in any particular verified             loc sig, LS, can fluctuate with successive invocations of             this program if the input to the successive invocations are             with location information geographically “near” LS.         -   (29.5) remove older verified loc sigs from use whose             confidence value is below a predetermined threshold. Note,             it is intended that such predetermined thresholds be             substantially automatically adjustable by periodically             testing various confidence factor thresholds in a specified             geographic area to determine how well the eligible data base             loc sigs (for different thresholds) perform in agreeing with             a number of verified loc sigs in a “loc sig test-bed”,             wherein the test bed may be composed of, for example,             repeatable loc sigs and recent random verified loc sigs.     -   Note that this program may be invoked with a (verified/known)         random and/or repeatable loc sig as input. Furthermore, the         target loc sigs to be updated may be selected from a particular         group of loc sigs such as the random loc sigs or the repeatable         loc sigs, such selection being determined according to the input         parameter, “selection_criteria” while the comparison population         may be designated with the input parameter, “loc_sig_pop”. For         example, to update confidence factors of certain random loc sigs         near “new loc_obj”, “selection_criteria” may be given a value         indicating, “USE RANDOM_LOC_SIGS”, and “loc_sig_pop” may be         given a value indicating, “USE_REPEATABLE_LOC_SIGS”. Thus, if in         a given geographic area, the repeatable loc sigs (from, e.g.,         stationary transceivers) in the area have recently been updated,         then by successively providing “new loc_obj” with a loc sig for         each of these repeatable loc sigs, the stored random loc sigs         can have their confidences adjusted.     -   Alternatively, in one embodiment of the present disclosure, the         present function may be used for determining when it is         desirable to update repeatable loc sigs in a particular area         (instead of automatically and periodically updating such         repeatable loc sigs). For example, by adjusting the confidence         factors on repeatable loc sigs here provides a method for         determining when repeatable loc sigs for a given area should be         updated. That is, for example, when the area's average         confidence factor for the repeatable loc sigs drops below a         given (potentially high) threshold, then the MSs that provide         the repeatable loc sigs can be requested to respond with new loc         sigs for updating the data base. Note, however, that the         approach presented in this function assumes that the repeatable         location information in the location signature data base 1320 is         maintained with high confidence by, for example, frequent data         base updating. Thus, the random location signature data base         verified location information may be effectively compared         against the repeatable loc sigs in an area.     -   Input:         -   new_loc_obj: a data representation at least including a loc             sig for an associated location about which Location             Signature loc sigs are to have their confidences updated.         -   selection_criteria: a data representation designating the             loc sigs to be selected to have their confidences updated             (may be defaulted). The following groups of loc sigs may be             selected: “USE_RANDOM_LOC_SIGS” (this is the default),             USE_REPEATABLE_LOC_SIGS”, “USE_ALL_LOC_SIGS”. Note that each             of these selections has values for the following values             associated with it (although the values may be defaulted):             -   (a) a confidence reduction factor for reducing loc sig                 confidences,             -   (b) a big_error_threshold for determining the errors                 above which are considered too big to ignore,             -   (c) a confidence_increase_factor for increasing loc sig                 confidences,             -   (d) a small_error_threshold for determining the errors                 below which are considered too small (i.e., good) to                 ignore.             -   (e) a recent_time for specifying a time period for                 indicating the loc sigs here considered to be “recent”.         -   loc_sig_pop: a data representation of the type of loc sig             population to which the loc sigs to be updated are compared.             The following values may be provided:             -   (a) “USE ALL LOC SIGS IN DB”,             -   (b) “USE ONLY REPEATABLE LOC SIGS” (this is the                 default),             -   (c) “USE ONLY LOC SIGS WITH SIMILAR TIME OF DAY”         -   However, environmental characteristics such as: weather,             traffic, season are also contemplated.

(J.1.2) Confidence Aging Program

The following program reduces the confidence of verified loc sigs in the location signature data base 1320 that are likely to be no longer accurate (i.e., in agreement with comparable loc sigs in the data base). If the confidence is reduced low enough, then such loc sigs are removed from the data base. Further, if for a location signature data base verified location composite entity (i.e., a collection of loc sigs for the same location and time), this entity no longer references any valid loc sigs, then it is also removed from the data base. Note that this program is invoked by “Update_Loc_Sig_DB”.

-   reduce_bad_DB_loc_sigs(loc_sig bag, error rec_set,     big_error_threshold confidence_reduction_factor, recent_time)

Inputs:

-   -   loc_sig_bag: A collection or “bag” of loc sigs to be tested for         determining if their confidences should be lowered and/or any of         these loc sigs removed.     -   error_rec_set: A set of error records (objects), denoted         “error_recs”, providing information as to how much each loc sig         in “loc_sig_bag” disagrees with comparable loc sigs in the data         base. That is, there is a “error_rec” here for each loc sig in         “loc_sig_bag”.     -   big_error_threshold: The error threshold above which the errors         are considered too big to ignore.     -   confidence_reduction_factor: The factor by which to reduce the         confidence of loc sigs.     -   recent_time: Time period beyond which loc sigs are no longer         considered recent. Note that “recent” loc sigs (i.e., more         recent than “recent_time”) are not subject to the confidence         reduction and filtering of this actions of this function.

(J.1.3) Confidence Enhancement Program

The following program increases the confidence of verified Location Signature loc sigs that are (seemingly) of higher accuracy (i.e., in agreement with comparable loc sigs in the location signature data base 1320). Note that this program is invoked by “Update_Loc_Sig_DB”.

-   increase_confidence_of good DB_loc_sigs(nearby_loc_sig bag,     error_rec_set, small_error_threshold, confidence_increase_factor,     recent_time);

Inputs:

-   -   loc_sig_bag: A collection or “bag” of to be tested for         determining if their confidences should be increased.     -   error_rec_set: A set of error records (objects), denoted         “error_recs”, providing information as to how much each loc sig         in “loc_sig_bag” disagrees with comparable loc sigs in the         location signature data base. That is, there is a “error_rec”         here for each loc sig in “loc_sig_bag”.     -   small_error_threshold: The error threshold below which the         errors are considered too small to ignore.     -   confidence_increase_factor: The factor by which to increase the         confidence of loc sigs.     -   recent_time: Time period beyond which loc sigs are no longer         considered recent. Note that “recent” loc sigs (i.e., more         recent than “recent_time”) are not subject to the confidence         reduction and filtering of this actions of this function.

(J.1.4) Location Hypotheses Consistency Program

The following program determines the consistency of location hypotheses with verified location information in the location signature data base 1320. Note that in the one embodiment of the present disclosure, this program is invoked primarily by a module denoted the historical location reasoner 1424 described sections hereinbelow. Moreover, the detailed description for this program is provided with the description of the historical location reasoner hereinbelow for completeness.

DB_Loc_Sig_Error_Fit(hypothesis, measured_loc_sig_bag, search_criteria)

-   -   /* This function determines how well the collection of loc sigs         in “measured_loc_sig_bag” fit with the loc sigs in the location         signature data base 1320 wherein the data base loc sigs must         satisfy the criteria of the input parameter “search_criteria”         and are relatively close to the MS location estimate of the         location hypothesis, “hypothesis”.         -   Input: hypothesis: MS location hypothesis;             -   measured_loc_sig_bag: A collection of measured location                 signatures (“loc sigs” for short) obtained from the MS                 (the data structure here is an aggregation such as an                 array or list). Note, it is assumed that there is at                 most one loc sig here per Base Station in this                 collection. Additionally, note that the input data                 structure here may be a location signature cluster such                 as the “loc_sig_cluster” field of a location hypothesis                 (cf. FIGS. 9A and B). Note that variations in input data                 structures may be accepted here by utilization of flag                 or tag bits as one skilled in the art will appreciate;             -   search_criteria: The criteria for searching the verified                 location signature data base for various categories of                 loc sigs. The only limitation on the types of categories                 that may be provided here is that, to be useful, each                 category should have meaningful number of loc sigs in                 the location signature data base. The following                 categories included here are illustrative, but others                 are contemplated:                 -   (a) “USE ALL LOC SIGS IN DB” (the default),                 -   (b) “USE ONLY REPEATABLE LOC SIGS”,                 -   (c) “USE ONLY LOC SIGS WITH SIMILAR TIME OF DAY”.             -    Further categories of loc sigs close to the MS estimate                 of “hypothesis” contemplated are: all loc sigs for the                 same season and same time of day, all loc sigs during a                 specific weather condition (e.g., snowing) and at the                 same time of day, as well as other limitations for other                 environmental conditions such as traffic patterns. Note,                 if this parameter is NIL, then (a) is assumed.         -   Returns: An error object (data type: “error object”)             having: (a) an “error” field with a measurement of the error             in the fit of the location signatures from the MS with             verified location signatures in the location signature data             base 1320; and (b) a “confidence” field with a value             indicating the perceived confidence that is to be given to             the “error” value. */

(J.1.5) Location Signature Comparison Program

The following program compares: (a1) loc sigs that are contained in (or derived from) the loc sigs in “target_loc_sig_bag” with (b1) loc sigs computed from verified loc sigs in the location signature data base 1320. That is, each loc sig from (a1) is compared with a corresponding loc sig from (b1) to obtain a measurement of the discrepancy between the two loc sigs. In particular, assuming each of the loc sigs for “target_loc_sig_bag” correspond to the same target MS location, wherein this location is “target_loc”, this program determines how well the loc sigs in “target_loc_sig_bag” fit with a computed or estimated loc sig for the location, “target_loc” that is derived from the verified loc sigs in the location signature data base 1320. Thus, this program may be used: (a2) for determining how well the loc sigs in the location signature cluster for a target MS (“target_loc_sig_bag”) compares with loc sigs derived from verified location signatures in the location signature data base, and (b2) for determining how consistent a given collection of loc sigs (“target_loc_sig_bag”) from the location signature data base is with other loc sigs in the location signature data base. Note that in (b2) each of the one or more loc sigs in “target_loc_sig_bag” have an error computed here that can be used in determining if the loc sig is becoming inapplicable for predicting target MS locations.

-   Determine_Location_Signature_Fit_Errors(target_loc,     target_loc_sig_bag, search_area, search_criteria, output_criteria)     -   /* Input: target_loc: An MS location or a location hypothesis         for an MS. Note, this can be any of the following:         -   (a) An MS location hypothesis, in which case, if the             hypothesis is inaccurate, then the loc sigs in             “target_loc_sig_bag” are the location signature cluster from             which this location hypothesis was derived. Note that if             this location is inaccurate, then “target_loc_sig_bag” is             unlikely to be similar to the comparable loc sigs derived             from the loc sigs of the location signature data base close             “target_loc”; or         -   (b) A previously verified MS location, in which case, the             loc sigs of “target_loc_sig_bag” were the loc sigs             measurements at the time they were verified. However, these             loc sigs may or may not be accurate now.     -   target_loc_sig_bag: Measured location signatures (“loc sigs” for         short) obtained from the MS (the data structure here, bag, is an         aggregation such as array or list). It is assumed that there is         at least one loc sig in the bag. Further, it is assumed that         there is at most one loc sig per Base Station;     -   search_area: The representation of the geographic area         surrounding “target_loc”. This parameter is used for searching         the Location Signature data base for verified loc sigs that         correspond geographically to the location of an MS in         “search_area;     -   search_criteria: The criteria used in searching the location         signature data base. The criteria may include the following:         -   (a) “USE ALL LOC SIGS IN DB”,         -   (b) “USE ONLY REPEATABLE LOC SIGS”,         -   (c) “USE ONLY LOC SIGS WITH SIMILAR TIME OF DAY”.     -    However, environmental characteristics such as: weather,         traffic, season are also contemplated.     -   output_criteria: The criteria used in determining the error         records to output in “error_rec_bag”.         -   The criteria here may include one of:             -   (a) “OUTPUT ALL POSSIBLE ERROR_RECS”;             -   (b) “OUTPUT ERROR_RECS FOR INPUT LOC SIGS ONLY”.     -   Returns: error_rec_bag: A bag of error records or objects         providing an indication of the similarity between each loc sig         in “target_loc_sig_bag” and an estimated loc sig computed for         “target_loc” from stored loc sigs in a surrounding area of         “target_loc”. Thus, each error record/object in “error_rec_bag”         provides a measurement of how well a loc sig (i.e., wireless         signal characteristics) in “target_loc_sig_bag” (for an         associated BS and the MS at “target_loc”) correlates with an         estimated loc sig between this BS and MS. Note that the         estimated loc sigs are determined using verified location         signatures in the Location Signature data base. Note, each error         record in “error_rec_bag” includes: (a) a BS ID indicating the         base station to which the error record corresponds; and (b) a         error measurement (>=0), and (c) a confidence value (in [0, 1])         indicating the confidence to be placed in the error measurement.

(J.1.6) Computed Location Signature Program

The following program receives a collection of loc sigs and computes a loc sig that is representative of the loc sigs in the collection. That is, given a collection of loc sigs, “loc_sig_bag”, wherein each loc sig is associated with the same predetermined Base Station, this program uses these loc sigs to compute a representative or estimated loc sig associated with the predetermined Base Station and associated with a predetermined MS location, “loc_for_estimation”. Thus, if the loc sigs in “loc_sig_bag” are from the verified loc sigs of the location signature data base such that each of these loc sigs also has its associated MS location relatively close to “loc_for_estimation”, then this program can compute and return a reasonable approximation of what a measured loc sig between an MS at “loc_for_estimation” and the predetermined Base Station ought to be. This program is invoked by “Determine_Location Signature_Fit Errors”.

-   -   estimate_loc_sig_from_DB(loc_for_estimation, loc_sig_bag)

(J.1.7) Geographic Area Representation Program

The following program determines and returns a representation of a geographic area about a location, “loc”, wherein: (a) the geographic area has associated MS locations for an acceptable number (i.e., at least a determined minimal number) of verified loc sigs from the location signature data base, and (b) the geographical area is not too big. However, if there are not enough loc sigs in even a largest acceptable search area about “loc”, then this largest search area is returned. “DB_Loc_Sig_Error_Fit”

-   -   get_area_to_search(loc)

(J.1.8) Location Signature Comparison Program

This program compares two location signatures, “target_loc_sig” and “comparison_loc_sig”, both associated with the same predetermined Base Station and the same predetermined MS location (or hypothesized location). This program determines a measure of the difference or error between the two loc sigs relative to the variability of the verified location signatures in a collection of loc sigs denoted the “comparison loc_sig bag” obtained from the location signature data base. It is assumed that “target_loc_sig”, “comparison loc_sig” and the loc sigs in “comparison loc_sig bag” are all associated with the same base station. This program returns an error record (object), “error_rec”, having an error or difference value and a confidence value for the error value. Note, the signal characteristics of “target_loc_sig” and those of “comparison loc_sig” are not assumed to be similarly normalized (e.g., via filters as per the filters of the Signal Processing Subsystem) prior to entering this function. It is further assumed that typically the input loc sigs satisfy the “search_criteria”. This program is invoked by: the program, “Determine_Location Signature_Fit Errors”, described above.

-   get_difference_measurement(target_loc_sig, comparison_loc_sig,     comparison_loc_sig_bag, search_area, search_criteria)

Input:

-   -   target loc_sig: The loc sig to which the “error_rec” determined         here is to be associated.     -   comparison loc_sig: The loc sig to compare with the         “target_loc_sig”. Note, if “comparison loc_sig” is NIL, then         this parameter has a value that corresponds to a noise level of         “target_loc_sig”.     -   comparison loc_sig bag: The universe of loc sigs to use in         determining an error measurement between “target_loc_sig” and         “comparison loc_sig”. Note, the loc sigs in this aggregation         include all loc sigs for the associated BS that are in the         “search_area”.     -   search_area: A representation of the geographical area         surrounding the location for all input loc sigs. This input is         used for determining extra information about the search area in         problematic circumstances.     -   search_criteria: The criteria used in searching the location         signature data base. The criteria may include the following:         -   (a) “USE ALL LOC SIGS IN DB”,         -   (b) “USE ONLY REPEATABLE LOC SIGS”,         -   (c) “USE ONLY LOC SIGS WITH SIMILAR TIME OF DAY     -   However, environmental characteristics such as: weather,         traffic, season are also contemplated.

(K) Detailed Description of the Hypothesis Evaluator Modules (K.1) Context Adjuster Embodiments

The context adjuster 1326 performs the first set of potentially many adjustments to at least the confidences of location hypotheses, and in some important embodiments, both the confidences and the target MS location estimates provided by FOMs 1224 may be adjusted according to previous performances of the FOMs. More particularly, as mentioned above, the context adjuster adjusts confidences so that, assuming there is a sufficient density verified location signature clusters captured in the location signature data base 1320, the resulting location hypotheses output by the context adjuster 1326 may be further processed uniformly and substantially without concern as to differences in accuracy between the first order models from which location hypotheses originate. Accordingly, the context adjuster adjusts location hypotheses both to environmental factors (e.g., terrain, traffic, time of day, etc., as described in 30.1 above), and to how predictable or consistent each first order model (FOM) has been at locating previous target MS's whose locations were subsequently verified.

Of particular importance is the novel computational paradigm utilized herein. That is, if there is a sufficient density of previous verified MS location data stored in the location signature data base 1320, then the FOM location hypotheses are used as an “index” into this data base (i.e., the location signature data base) for constructing new target MS 140 location estimates. A more detailed discussion of this aspect of the present disclosure is given hereinbelow. Accordingly, only a brief overview is provided here. Thus, since the location signature data base 1320 stores previously captured MS location data including:

-   -   (a) clusters of MS location signature signals (see the location         signature data base section for a discussion of these signals)         and     -   (b) a corresponding verified MS location, for each such cluster,         from where the MS signals originated, the context adjuster 1326         uses newly created target MS location hypotheses output by the         FOM's as indexes or pointers into the location signature data         base for identifying other geographical areas where the target         MS 140 is likely to be located based on the verified MS location         data in the location signature data base.

In particular, at least the following two criteria are addressed by the context adjuster 1326:

-   -   (32.1) Confidence values for location hypotheses are to be         comparable regardless of first order models from which the         location hypotheses originate. That is, the context adjuster         moderates or dampens confidence value assignment distinctions or         variations between first order models so that the higher the         confidence of a location hypothesis, the more likely (or         unlikely, if the location hypothesis indicates an area estimate         where the target MS is NOT) the target MS is perceived to be in         the estimated area of the location hypothesis regardless of the         First Order Model from which the location hypothesis was output;     -   (32.2) Confidence values for location hypotheses may be adjusted         to account for current environmental characteristics such as         month, day (weekday or weekend), time of day, area type (urban,         rural, etc.), traffic and/or weather when comparing how accurate         the first order models have previously been in determining an MS         location according to such environmental characteristics. For         example, in one embodiment of the present disclosure, such         environmental characteristics are accounted for by utilizing a         transmission area type scheme (as discussed in section 5.9         above) when adjusting confidence values of location hypotheses.         Details regarding the use of area types for adjusting the         confidences of location hypotheses and provided hereinbelow, and         in particular, in APPENDIX D.

Note that in satisfying the above two criteria, the context adjuster 1326, at least in one embodiment, may use heuristic (fuzzy logic) rules to adjust the confidence values of location hypotheses from the first order models. Additionally, the context adjuster may also satisfy the following criteria:

-   -   (33.1) The context adjuster may adjust location hypothesis         confidences due to BS failure(s),     -   (33.2) Additionally in one embodiment, the context adjuster may         have a calibration mode for at least one of:         -   (a) calibrating the confidence values assigned by first             order models to their location hypotheses outputs;         -   (b) calibrating itself.

A first embodiment of the context adjuster is discussed immediately hereinbelow and in APPENDIX D. However, the present disclosure also includes other embodiments of the context adjuster. A second embodiment is also described in Appendix D so as to not overburden the reader and thereby chance losing perspective of the overall invention.

A description of the high level functions in an embodiment of the context adjuster 1326 follows. Details regarding the implementation of these functions are provided in APPENDIX D. Also, many of the terms used hereinbelow are defined in APPENDIX D. Accordingly, the program descriptions in this section provide the reader with an overview of this first embodiment of the context adjuster 1326.

Context_adjuster(loc_hyp_list)

This function adjusts the location hypotheses on the list, “loc_hyp_list”, so that the confidences of the location hypotheses are determined more by empirical data than default values from the First Order Models 1224. That is, for each input location hypothesis, its confidence (and an MS location area estimate) may be exclusively determined here if there are enough verified location signatures available within and/or surrounding the location hypothesis estimate.

This function creates a new list of location hypotheses from the input list, “loc_hyp_list”, wherein the location hypotheses on the new list are modified versions of those on the input list. For each location hypothesis on the input list, one or more corresponding location hypotheses will be on the output list. Such corresponding output location hypotheses will differ from their associated input location hypothesis by one or more of the following: (a) the “image_area” field (see FIGS. 9A and 9B) may be assigned an area indicative of where the target MS is estimated to be, (b) if “image_area” is assigned, then the “confidence” field will be the confidence that the target MS is located in the area for “image_area”, (c) if there are not sufficient “nearby” verified location signature clusters in the location signature data base 1320 to entirely rely on a computed confidence using such verified location signature clusters, then two location hypotheses (having reduced confidences) will be returned, one having a reduced computed confidence (for “image_area”) using the verified clusters in the Location Signature data base, and one being substantially the same as the associated input location hypothesis except that the confidence (for the field “area_est”) is reduced to reflect the confidence in its paired location hypothesis having a computed confidence for “image_area”. Note also, in some cases, the location hypotheses on the input list, may have no change to its confidence or the area to which the confidence applies.

Get_adjusted_loc_hyp_list_for(loc_hyp)

This function returns a list (or more generally, an aggregation object) of one or more location hypotheses related to the input location hypothesis, “loc_hyp”. In particular, the returned location hypotheses on the list are “adjusted” versions of “loc_hyp” in that both their target MS 140 location estimates, and confidence placed in such estimates may be adjusted according to archival MS location information in the location signature data base 1320. Note that the steps herein are also provided in flowchart form in FIGS. 26 a through 26 c.

-   RETURNS: loc_hyp_list This is a list of one or more location     hypotheses related to the input “loc_hyp”. Each location hypothesis     on “loc_hyp_list” will typically be substantially the same as the     input “loc_hyp” except that there may now be a new target MS     estimate in the field, “image_area”, and/or the confidence value may     be changed to reflect information of verified location signature     clusters in the location signature data base.

The function, “get_adjusted_loc_hyp_list_for,” and functions called by this function presuppose a framework or paradigm that requires some discussion as well as the defining of some terms. Note that some of the terms defined hereinbelow are illustrated in FIG. 24.

Define the term the “the cluster set” to be the set of all MS location point estimates (e.g., the values of the “pt_est” field of the location hypothesis data type), for the present FOM, such that:

-   -   (a) these estimates are within a predetermined corresponding         area (e.g., the “loc_hyp.pt_covering” being such a predetermined         corresponding area, or more generally, this predetermined         corresponding area is determined as a function of the distance         from an initial location estimate, e.g., “loc_hyp.pt_est”, from         the FOM), and     -   (b) these point estimates have verified location signature         clusters in the location signature data base.

Note that the predetermined corresponding area above will be denoted as the “cluster set area”.

Define the term “image cluster set” (for a given First Order Model identified by “loc_hyp.FOM_ID”) to mean the set of verified location signature clusters whose MS location point estimates are in “the cluster set”.

Note that an area containing the “image cluster set” will be denoted as the “image cluster set area” or simply the “image_area” in some contexts. Further note that the “image cluster set area” will be a “small” area encompassing the “image cluster set”. In one embodiment, the image cluster set area will be the smallest covering of cells from the mesh for the present FOM that covers the convex hull of the image cluster set. Note that preferably, each cell of each mesh for each FOM is substantially contained within a single (transmission) area type.

Thus, the present FOM provides the correspondences or mapping between elements of the cluster set and elements of the image cluster set.

confidence_adjuster(FOM_ID, image_area, image_cluster_set)

This function returns a confidence value indicative of the target MS 140 being in the area for “image_area”. Note that the steps for this function are provided in flowchart form in FIGS. 27 a and 27 b.

-   -   RETURNS: A confidence value. This is a value indicative of the         target MS being located in the area represented by “image_area”         (when it is assumed that for the related “loc_hyp,” the “cluster         set area” is the “loc_hyp.pt_covering” and “loc_hyp.FOM_ID” is         “FOM_ID”).

The function, “confidence_adjuster,” (and functions called by this function) presuppose a framework or paradigm that requires some discussion as well as the defining of terms.

-   -   Define the term “mapped cluster density” to be the number of the         verified location signature clusters in an “image cluster set”         per unit of area in the “image cluster set area”.     -   It is believed that the higher the “mapped cluster density”, the         greater the confidence can be had that a target MS actually         resides in the “image cluster set area” when an estimate for the         target MS (by the present FOM) is in the corresponding “the         cluster set”.     -   Thus, the mapped cluster density becomes an important factor in         determining a confidence value for an estimated area of a target         MS such as, for example, the area represented by “image_area”.         However, the mapped cluster density value requires modification         before it can be utilized in the confidence calculation. In         particular, confidence values must be in the range [−1, 1] and a         mapped cluster density does not have this constraint. Thus, a         “relativized mapped cluster density” for an estimated MS area is         desired, wherein this relativized measurement is in the range         [−1, +1], and in particular, for positive confidences in the         range [0, 1]. Accordingly, to alleviate this difficulty, for the         FOM define the term “prediction mapped cluster density” as a         mapped cluster density value, MCD, for the FOM and image cluster         set area wherein:         -   (i) MCD is sufficiently high so that it correlates (at least             at a predetermined likelihood threshold level) with the             actual target MS location being in the “image cluster set             area” when a FOM target MS location estimate is in the             corresponding “cluster set area”.     -    That is, for a cluster set area (e.g., “loc_hyp.pt_covering”)         for the present FOM, if the image cluster set area: has a mapped         cluster density greater than the “prediction mapped cluster         density”, then there is a high likelihood of the target MS being         in the image cluster set area.     -   It is believed that the prediction mapped cluster density will         typically be dependent on one or more area types. In particular,         it is assumed that for each area type, there is a likely range         of prediction mapped cluster density values that is         substantially uniform across the area type. Accordingly, as         discussed in detail hereinbelow, to calculate a prediction         mapped cluster density for a particular area type, an estimate         is made of the correlation between the mapped cluster densities         of image areas (from cluster set areas) and the likelihood that         if a verified MS location: (a) has a corresponding FOM MS         estimate in the cluster set, and (b) is also in the particular         area type, then the verified MS location is also in the image         area.     -   Thus, if an area is within a single area type, then such a         “relativized mapped cluster density” measurement for the area         may be obtained by dividing the mapped cluster density by the         prediction mapped cluster density and taking the smaller of: the         resulting ratio and 1.0 as the value for the relativized mapped         cluster density.     -   In some (perhaps most) cases, however, an area (e.g., an image         cluster set area) may have portions in a number of area types.         Accordingly, a “composite prediction mapped cluster density” may         be computed, wherein, a weighted sum is computed of the         prediction mapped cluster densities for the portions of the area         that is in each of the area types. That is, the weighting, for         each of the single area type prediction mapped cluster         densities, is the fraction of the total area that this area type         is. Thus, a “relativized composite mapped cluster density” for         the area here may also be computed by dividing the mapped         cluster density by the composite prediction mapped cluster         density and taking the smaller of: the resulting ratio and 1.0         as the value for the relativized composite mapped cluster         density.         Accordingly, note that as such a relativized (composite) mapped         cluster density for an image cluster set area         increases/decreases, it is assumed that the confidence of the         target MS being in the image cluster set area should         increase/decrease, respectively.         get_composite_prediction_mapped_cluster_density_for_high_certainty(FOM_ID,         image_area);

The present function determines a composite prediction mapped cluster density by determining a composite prediction mapped cluster density for the area represented by “image_area” and for the First Order Model identified by “FOM_ID”.

-   -   OUTPUT: composite mapped density This is a record for the         composite prediction mapped cluster density. In particular,         there are with two fields:         -   (i) a “value” field giving an approximation to the             prediction mapped cluster density for the First Order Model             having id, FOM_ID;         -   (ii) a “reliability” field giving an indication as to the             reliability of the “value” field. The reliability field is             in the range [0, 1] with 0 indicating that the “value” field             is worthless and the larger the value the more assurance can             be put in “value” with maximal assurance indicated when             “reliability” is 1.             get_prediction_mapped_cluster_density_for(FOM_ID, area_type)

The present function determines an approximation to a prediction mapped cluster density, D, for an area type such that if an image cluster set area has a mapped cluster density >=D, then there is a high expectation that the target MS 140 is in the image cluster set area. Note that there are a number of embodiments that may be utilized for this function. The steps herein are also provided in flowchart form in FIGS. 29 a through 29 h.

-   OUTPUT: prediction mapped cluster density This is a value giving an     approximation to the prediction mapped cluster density for the First     Order Model having identity, “FOM_ID”, and for the area type     represented by “area_type”*/

It is important to note that the computation here for the prediction mapped cluster density may be more intense than some other computations but the cluster densities computed here need not be performed in real time target MS location processing. That is, the steps of this function may be performed only periodically (e.g., once a week), for each FOM and each area type thereby precomputing the output for this function. Accordingly, the values obtained here may be stored in a table that is accessed during real time target MS location processing. However, for simplicity, only the periodically performed steps are presented here. However, one skilled in the art will understand that with sufficiently fast computational devices, some related variations of this function may be performed in real-time. In particular, instead of supplying area type as an input to this function, a particular area, A, may be provided such as the image area for a cluster set area, or, the portion of such an image area in a particular area type. Accordingly, wherever “area_type” is used in a statement of the embodiment of this function below, a comparable statement with “A” can be provided.

(K.2) Location Hypothesis Analyzer Embodiment

Referring now to FIG. 7, an embodiment of the Hypothesis Analyzer is illustrated. The control component is denoted the control module 1400. Thus, this control module manages or controls access to the run time location hypothesis storage area 1410. The control module 1400 and the run time location hypothesis storage area 1410 may be implemented as a blackboard system and/or an expert system. Accordingly, in the blackboard embodiment, and the control module 1400 determines when new location hypotheses may be entered onto the blackboard from other processes such as the context adjuster 1326 as well as when location hypotheses may be output to the most likelihood estimator 1344.

The following is a brief description of each submodule included in the location hypothesis analyzer 1332.

-   (35.1) A control module 1400 for managing or controlling further     processing of location hypotheses received from the context     adjuster. This module controls all location hypothesis processing     within the location hypothesis analyzer as well as providing the     input interface with the context adjuster. There are numerous     embodiments that may be utilized for this module, including, but not     limited to, expert systems and blackboard managers. -   (35.2) A run-time location hypothesis storage area 1410 for     retaining location hypotheses during their processing by the     location hypotheses analyzer. This can be, for example, an expert     system fact base or a blackboard. Note that in some of the     discussion hereinbelow, for simplicity, this module is referred to     as a “blackboard”. However, it is not intended that such notation be     a limitation on the present disclosure; i.e., the term “blackboard”     hereinafter will denote a run-time data repository for a data     processing paradigm wherein the flow of control is substantially     data-driven. -   (35.3) An analytical reasoner module 1416 for determining if (or how     well) location hypotheses are consistent with well known physical or     heuristic constraints as, e.g., mentioned in (30.4) above. Note that     this module may be a daemon or expert system rule base. -   (35.4) An historical location reasoner module 1424 for adjusting     location hypotheses' confidences according to how well the location     signature characteristics (i.e., loc sigs) associated with a     location hypothesis compare with “nearby” loc sigs in the location     signature data base as indicated in (30.3) above. Note that this     module may also be a daemon or expert system rule base. -   (35.5) A location extrapolator module 1432 for use in updating     previous location estimates for a target MS when a more recent     location hypothesis is provided to the location hypothesis analyzer     1332. That is, assume that the control module 1400 receives a new     location hypothesis for a target MS for which there are also one or     more previous location hypotheses that either have been recently     processed (i.e., they reside in the MS status repository 1338, as     shown best in FIG. 6), or are currently being processed (i.e., they     reside in the run-time location hypothesis storage area 1410).     Accordingly, if the active timestamp (see FIGS. 9A and 9B regarding     location hypothesis data fields) of the newly received location     hypothesis is sufficiently more recent than the active timestamp of     one of these previous location hypotheses, then an extrapolation may     be performed by the location extrapolator module 1432 on such     previous location hypotheses so that all target MS location     hypotheses being concurrently analyzed are presumed to include     target MS location estimates for substantially the same point in     time. Thus, initial location estimates generated by the FOMs using     different wireless signal measurements, from different signal     transmission time intervals, may have their corresponding dependent     location hypotheses utilized simultaneously for determining a most     likely target MS location estimate. Note that this module may also     be daemon or expert system rule base. -   (35.6) hypothesis generating module 1428 for generating additional     location hypotheses according to, for example, MS location     information not adequately utilized or modeled. Note, location     hypotheses may also be decomposed here if, for example it is     determined that a location hypothesis includes an MS area estimate     that has subareas with radically different characteristics such as     an MS area estimate that includes an uninhabited area and a densely     populated area. Additionally, the hypothesis generating module 1428     may generate “poor reception” location hypotheses that specify MS     location areas of known poor reception that are “near” or intersect     currently active location hypotheses. Note, that these poor     reception location hypotheses may be specially tagged (e.g., with a     distinctive FOM_ID value or specific tag field) so that regardless     of substantially any other location hypothesis confidence value     overlapping such a poor reception area, such an area will maintain a     confidence value of “unknown” (i.e., zero). Note that substantially     the only exception to this constraint is location hypotheses     generated from mobile base stations 148. Note that this module may     also be daemon or expert system rule base.

In the blackboard system embodiment of the location hypothesis analyzer, a blackboard system is the mechanism by which the last adjustments are performed on location hypotheses and by which additional location hypotheses may be generated. Briefly, a blackboard system can be described as a particular class of software that typically includes at least three basic components. That is:

-   -   (36.1) a data base called the “blackboard,” whose stored         information is commonly available to a collection of programming         elements known as “daemons”, wherein, in the present disclosure,         the blackboard includes information concerning the current         status of the location hypotheses being evaluated to determine a         “most likely” MS location estimate. Note that this data base is         provided by the run time location hypothesis storage area 1410;     -   (36.2) one or more active (and typically opportunistic)         knowledge sources, denoted conventionally as “daemons,” that         create and modify the contents of the blackboard. The blackboard         system employed requires only that the daemons have application         knowledge specific to the MS location problem addressed by the         present disclosure. As shown in FIG. 7, the knowledge sources or         daemons in the hypothesis analyzer include the analytical         reasoner module 1416, the hypothesis generating module 1428, and         the historical location reasoner module 1416;     -   (36.3) a control module that enables the realization of the         behavior in a serial computing environment. The control element         orchestrates the flow of control between the various daemons.         This control module is provided by the control module 1400.

Note that this blackboard system may be commercial, however, the knowledge sources, i.e., daemons, have been developed specifically for an embodiment of the present disclosure. For further information regarding such blackboard systems, the following references are incorporated herein by reference: (a) Jagannathan, V., Dodhiawala, R., & Baum, L. S. (1989). Blackboard architectures and applications. Boston, Mass.: Harcourt Brace Jovanovich Publishers; (b) Engelmore, R., & Morgan, T. (1988). Blackboard systems. Reading, Mass.: Addison-Wesley Publishing Company.

Alternatively, the control module 1400 and the run-time location hypothesis storage area 1410 may be implemented as an expert system or as a fuzzy rule inferencing system, wherein the control module 1400 activates or “fires” rules related to the knowledge domain (in the present case, rules relating to the accuracy of MS location hypothesis estimates), and wherein the rules provide a computational embodiment of, for example, constraints and heuristics related to the accuracy of MS location estimates. Thus, the control module 1400 for the present embodiment is also used for orchestrating, coordinating and controlling the activity of the individual rule bases of the location hypothesis analyzer (e.g. as shown in FIG. 7, the analytical reasoner module 1416, the hypothesis generating module 1428, the historical location reasoner module 1424, and the location extrapolator module 1432). For further information regarding such expert systems, the following reference is incorporated herein by reference: Waterman, D. A. (1970). A guide to expert systems. Reading, Mass.: Addison-Wesley Publishing Company.

(K.3) MS Status Repository Embodiment

The MS status repository 1338 is a run-time storage manager for storing location hypotheses from previous activations of the location engine 139 (as well as the output target MS location estimate(s)) so that a target MS may be tracked using target MS location hypotheses from previous location engine 139 activations to determine, for example, a movement of the target MS between evaluations of the target MS location. Thus, by retaining a moving window of previous location hypotheses used in evaluating positions of a target MS, measurements of the target MS's velocity, acceleration, and likely next position may be determined by the location hypothesis analyzer 1332. Further, by providing accessibility to recent MS location hypotheses, these hypotheses may be used to resolve conflicts between hypotheses in a current activation for locating the target MS; e.g., MS paths may be stored here for use in extrapolating a new location

(K.4) Most Likelihood Estimator Embodiment

The most likelihood estimator 1344 is a module for determining a “most likely” location estimate for a target MS 140 being located (e.g., as in (30.7) above). In one embodiment, the most likelihood estimator performs an integration or summing of all location hypothesis confidence values for any geographic region(s) of interest having at least one location hypothesis that has been provided to the most likelihood estimator, and wherein the location hypothesis has a relatively (or sufficiently) high confidence. That is, the most likelihood estimator 1344 determines the area(s) within each such region having high confidences (or confidences above a threshold) as the most likely target MS 140 location estimates.

In one embodiment of the most likelihood estimator 1344, this module utilizes an area mesh, M, over which to integrate, wherein the mesh cells of M are preferably smaller than the greatest location accuracy desired. That is, each cell, c, of M is assigned a confidence value indicating a likelihood that the target MS 140 is located in c, wherein the confidence value for c is determined by the confidence values of the target MS location estimates provided to the most likelihood estimator 1344. Thus, to obtain the most likely location determination(s) the following steps are performed:

-   -   (a) For each of the active location hypotheses output by, e.g.,         the hypothesis analyzer 1332 (alternatively, the context         adjuster 1326), each corresponding MS location area estimate,         LAE, is provided with a smallest covering, C_(LAE), of cells c         from M.     -   (b) Subsequently, each of the cells of C_(LAE) have their         confidence values adjusted by adding to it the confidence value         for LAE. Accordingly, if the confidence of LAE is positive, then         the cells of C_(LAE) have their confidences increased.         Alternatively, if the confidence of LAE is negative, then the         cells of C_(LAE) have their confidences decreased.     -   (c) Given that the interval [−1.0, +1.0] represents the range in         confidence values, and that this range has been partitioned into         intervals, Int, having lengths of, e.g., 0.05, for each         interval, Int, perform a cluster analysis function for         clustering cells with confidences that are in Int. Thus, a         topographical-type map may be constructed from the resulting         cell clusters, wherein higher confidence areas are analogous to         representations of areas having higher elevations.     -   (d) Output a representation of the resulting clusters for each         Int to the output gateway 1356 for determining the location         granularity and representation desired by each location         application 146 requesting the location of the target MS 140.

Of course, variations in the above algorithm are also within the scope of the present disclosure. For example, some embodiments of the most likelihood estimator 1344 may:

-   -   (e) Perform special processing for areas designated as “poor         reception” areas. For example, the most likelihood estimator         1344 may be able to impose a confidence value of zero (i.e.,         meaning it is unknown as to whether the target MS is in the         area) on each such poor reception area regardless of the         location estimate confidence values unless there is a location         hypothesis from a reliable and unanticipated source. That is,         the mesh cells of a poor reception area may have their         confidences set to zero unless, e.g., there is a location         hypothesis derived from target MS location data provided by a         mobile base station 148 that: (a) is near the poor reception         area, (b) able to detect that the target MS 140 is in the poor         reception area, and (c) can relay target MS location data to the         location center 142. In such a case, the confidence of the         target MS location estimate from the MBS location hypothesis may         take precedence. Thus, as disclosed, e.g., in the Summary         section hereinabove as well as the mobile station descriptions         hereinbelow, such a target MS location estimate from a MBS 148         can be dependent on the GPS location of the MBS 148.     -   (f) Additionally, in some embodiments of the most likelihood         estimator 1344, cells c of M that are “near” or adjacent to a         covering C_(LAE) may also have their confidences adjusted         according to how near the cells c are to the covering. That is,         the assigning of confidences to cell meshes may be “fuzzified”         in the terms of fuzzy logic so that the confidence value of each         location hypothesis utilized by the most likelihood estimator         1344 is provided with a weighting factor depending on its         proxity to the target MS location estimate of the location         hypothesis. More precisely, it is believed that “nearness,” in         the present context, should be monotonic with the “wideness” of         the covering; i.e., as the extent of the covering increases         (decreases) in a particular direction, the cells c affected         beyond the covering also increases (decreases). Furthermore, in         some embodiments of the most likelihood estimator 1344, the         greater (lesser) the confidence in the LAE, the more (fewer)         cells c beyond the covering have their confidences affected. To         describe this technique in further detail, reference is made to         FIG. 10, wherein an area A is assumed to be a covering C_(LAE)         having a confidence denoted “conf”. Accordingly, to determine a         confidence adjustment to add to a cell c not in A (and         additionally, the centroid of A not being substantially         identical with the centroid of c which could occur if A were         donut shaped), the following steps may be performed:         -   (i) Determine the centroid of A, denoted Cent(A).         -   (ii) Determine the centroid of the cell c, denoted Q.         -   (iii) Determine the extent of A along the line between             Cent(A) and Q, denoted L.         -   (iv) For a given type of probability density function, P(x),             such as a Gaussian function, let T be the beginning portion             of the function that lives on the x-axis interval [0, t],             wherein P(t)=ABS(conf)=the absolute value of the confidence             of C_(LAE).         -   (v) Stretch T along the x-axis so that the stretched             function, denoted sT(x), has an x-axis support of [0,             L/(1+e^(−[a(ABS(conf)−1)]))], where a is in range of 3.0 to             10.0; e.g., 5.0. Note that sT(x) is the function,             -   P(x*(1+e^(−[a(ABS(conf)−1)]))/L), on this stretched                 extent. Further note that for confidences of +1 and −1,                 the support of sT(x) is [0, L] and for confidences at                 (or near) zero this support. Further, the term,

L/(1+e^(−[a(ABS(conf)−1)]))

-   -   -    is monotonically increasing with L and ABS(conf).         -   (vi) Determine D=the minimum distance that Q is outside of A             along the line between Cent(A) and Q.         -   (vii) Determine the absolute value of the change in the             confidence of c as sT(D).         -   (viii) Provide the value sT(D) with the same sign as conf,             and provide the potentially sign changed value sT(D) as the             confidence of the cell c.

Additionally, in some embodiments, the most likelihood estimator 1344, upon receiving one or more location hypotheses from the hypothesis analyzer 1332, also performs some or all of the following tasks:

-   -   (37.1) Filters out location hypotheses having confidence values         near zero whenever such location hypotheses are deemed too         unreliable to be utilized in determining a target MS location         estimate. For example, location hypotheses having confidence         values in the range [−0.02, 0.02] may be filtered here;     -   37.2) Determines the area of interest over which to perform the         integration. In one embodiment, this area is a convex hull         including each of the MS area estimates from the received         location hypotheses (wherein such location hypotheses have not         been removed from consideration by the filtering process of         (37.1));     -   (37.3) Determines, once the integration is performed, one or         more collections of contiguous area mesh cells that may be         deemed a “most likely” MS location estimate, wherein each such         collection includes one or more area mesh cells having a high         confidence value.

(K.5) Detailed Description of the Location Hypothesis Analyzer 1332 Submodules (K.5.1) Analytical Reasoner Module 1416

The analytical reasoner applies constraint or “sanity” checks to the target MS estimates of the location hypotheses residing in the Run-time Location Hypothesis Storage Area for adjusting the associated confidence values accordingly. In one embodiment, these sanity checks involve “path” information. That is, this module determines if (or how well) location hypotheses are consistent with well known physical constraints such as the laws of physics, in an area in which the MS (associated with the location hypothesis) is estimated to be located. For example, if the difference between a previous (most likely) location estimate of a target MS and an estimate by a current location hypothesis requires the MS to:

-   -   (a) move at an unreasonably high rate of speed (e.g., 200 mph),         or     -   (b) move at an unreasonably high rate of speed for an area         (e.g., 80 mph in a corn patch), or     -   (c) make unreasonably sharp velocity changes (e.g., from 60 mph         in one direction to 60 mph in the opposite direction in 4 sec),         then the confidence in the current hypothesis is reduced. Such         path information may be derived for each time series of location         hypotheses resulting from the FOMs by maintaining a window of         previous location hypotheses in the MS status repository 1338.         Moreover, by additionally retaining the “most likely” target MS         location estimates (output by the most likelihood estimator         1344), current location hypotheses may be compared against such         most likely MS location estimates.

The following path sanity checks are incorporated into the computations of this module. That is:

-   -   (1) do the predicted MS paths generally follow a known         transportation pathway (e.g., in the case of a calculated speed         of greater than 50 miles per hour are the target MS location         estimates within, for example, 0.2 miles of a pathway where such         speed may be sustained); if so (not), then increase (decrease)         the confidence of the location hypotheses not satisfying this         criterion;     -   (2) are the speeds, velocities and accelerations, determined         from the current and past target MS location estimates,         reasonable for the region (e.g., speeds should be less than 60         miles per hour in a dense urban area at 9 am); if so (not), then         increase (decrease) the confidence of those that are         (un)reasonable;     -   (3) are the locations, speeds, velocities and/or accelerations         similar between target MS tracks produced by different FOMs         similar; decrease the confidence of the currently active         location hypotheses that are indicated as “outliers” by this         criterion;     -   (4) are the currently active location hypothesis target MS         estimates consistent with previous predictions of where the         target MS is predicted to be from a previous (most likely)         target MS estimate; if not, then decrease the confidence of at         least those location hypothesis estimates that are substantially         different from the corresponding predictions. Note, however,         that in some cases this may be over ruled. For example, if the         prediction is for an area for which there is Location Base         Station coverage, and no Location Base Station covering the area         subsequently reports communicating with the target MS, then the         predictions are incorrect and any current location hypothesis         from the same FOM should not be decreased here if it is outside         of this Location Base Station coverage area.

Notice from FIG. 7 that the analytical reasoner can access location hypotheses currently posted on the Run-time Location Hypothesis Storage Area. Additionally, it interacts with the Pathway Database which contains information concerning the location of natural transportation pathways in the region (highways, rivers, etc.) and the Area Characteristics Database which contains information concerning, for example, reasonable velocities that can be expected in various regions (for instance, speeds of 80 mph would not be reasonably expected in dense urban areas). Note that both speed and direction can be important constraints; e.g., even though a speed might be appropriate for an area, such as 20 mph in a dense urban area, if the direction indicated by a time series of related location hypotheses is directly through an extensive building complex having no through traffic routes, then a reduction in the confidence of one or more of the location hypotheses may be appropriate.

One embodiment of the Analytical Reasoner illustrating how such constraints may be implemented is provided in the following section. Note, however, that this embodiment analyzes only location hypotheses having a non-negative confidence value.

Modules of an embodiment of the analytical reasoner module 1416 are provided hereinbelow.

(K.5.1.1) Path Comparison Module

The path comparison module 1454 implements the following strategy: the confidence of a particular location hypothesis is to be increased (decreased) if it is (not) predicting a path that lies along a known transportation pathway (and the speed of the target MS is sufficiently high). For instance, if a time series of target MS location hypotheses for a given FOM is predicting a path of the target MS that lies along an interstate highway, the confidence of the currently active location hypothesis for this FOM should, in general, be increased. Thus, at a high level the following steps may be performed:

-   -   (a) For each FOM having a currently active location hypothesis         in the Run-time Location Hypothesis Storage Area (also denoted         “blackboard”), determine a recent “path” obtained from a time         series of location hypotheses for the FOM. This computation for         the “path” is performed by stringing together successive “center         of area” (COA) or centroid values determined from the most         pertinent target MS location estimate in each location         hypothesis (recall that each location hypothesis may have a         plurality of target MS area estimates with one being the most         pertinent). The information is stored in, for example, a matrix         of values wherein one dimension of the matrix identifies the FOM         and the a second dimension of the matrix represents a series of         COA path values. Of course, some entries in the matrix may be         undefined.     -   (b) Compare each path obtained in (a) against known         transportation pathways in an area containing the path. A value,         path match(i), representing to what extent the path matches any         known transportation pathway is computed. Such values are used         later in a computation for adjusting the confidence of each         corresponding currently active location hypothesis.

(K.5.1.2) Velocity/Acceleration Calculation Module

The velocity/acceleration calculation module 1458 (FIG. 7) computes velocity and/or acceleration estimates for the target MS 140 using currently active location hypotheses and previous location hypothesis estimates of the target MS. In one embodiment, for each FOM 1224 having a currently active location hypothesis (with positive confidences) and a sufficient number of previous (reasonably recent) target MS location hypotheses, a velocity and/or acceleration may be calculated. In an alternative embodiment, such a velocity and/or acceleration may be calculated using the currently active location hypotheses and one or more recent “most likely” locations of the target MS output by the location engine 139. If the estimated velocity and/or acceleration corresponding to a currently active location hypothesis is reasonable for the region, then its confidence value may be incremented; if not, then its confidence may be decremented. The algorithm may be summarized as follows:

-   -   (a) Approximate speed and/or acceleration estimates for         currently active target MS location hypotheses may be provided         using path information related to the currently active location         hypotheses and previous target MS location estimates in a manner         similar to the description of the path comparison module 1454.         Accordingly, a single confidence adjustment value may be         determined for each currently active location hypothesis for         indicating the extent to which its corresponding velocity and/or         acceleration calculations are reasonable for its particular         target MS location estimate. This calculation is performed by         retrieving information from the area characteristics data base         1450 (e.g., FIGS. 6 and 7). Since each location hypothesis         includes timestamp data indicating when the MS location signals         were received from the target MS, the velocity and/or         acceleration associated with a path for a currently active         location hypothesis can be straightforwardly approximated.         Accordingly, a confidence adjustment value, vel_ok(i),         indicating a likelihood that the velocity calculated for the         i^(th) currently active location hypothesis (having adequate         corresponding path information) may be appropriate is calculated         using for the environmental characteristics of the location         hypothesis' target MS location estimate. For example, the area         characteristics data base 1450 may include expected maximum         velocities and/or accelerations for each area type and/or cell         of a cell mesh of the coverage area 120. Thus, velocities and/or         accelerations above such maximum values may be indicative of         anomalies in the MS location estimating process. Accordingly, in         one embodiment, the most recent location hypotheses yielding         such extreme velocities and/or accelerations may have their         confidence values decreased. For example, if the target MS         location estimate includes a portion of an interstate highway,         then an appropriate velocity might correspond to a speed of up         to 100 miles per hour, whereas if the target MS location         estimate includes only rural dirt roads and tomato patches, then         a likely speed might be no more than 30 miles per hour with an         maximum speed of 60 miles per hour (assuming favorable         environmental characteristics such as weather). Note that a list         of such environmental characteristics may include such factors         as: area type, time of day, season. Further note that more         unpredictable environmental characteristics such as traffic flow         patterns, weather (e.g., clear, raining, snowing, etc.) may also         be included, values for these latter characteristics coming from         the environmental data base 1354 which receives and maintains         information on such unpredictable characteristics (e.g., FIGS. 6         and 7). Also note that a similar confidence adjustment value,         acc_ok(i), may be provided for currently active location         hypotheses, wherein the confidence adjustment is related to the         appropriateness of the acceleration estimate of the target MS.

(K.5.1.3) Attribute Comparison Module

The attribute comparison module 1462 (FIG. 7) compares attribute values for location hypotheses generated from different FOMs, and determines if the confidence of certain of the currently active location hypotheses should be increased due to a similarity in related values for the attribute. That is, for an attribute A, an attribute value for A derived from a set S_(FOM[1]) of one or more location hypotheses generated by one FOM, FOM[1], is compared with another attribute value for A derived from a set S_(FOM2) of one or more location hypotheses generated by a different FOM, FOM[2] for determining if these attribute values cluster (i.e., are sufficiently close to one another) so that a currently active location hypothesis in S_(FOM[1]) and a currently active location hypothesis in S_(FOM[2]) should have their confidences increased. For example, the attribute may be a “target MS path data” attribute, wherein a value for the attribute is an estimated target MS path derived from location hypotheses generated by a fixed FOM over some (recent) time period. Alternatively, the attribute might be, for example, one of a velocity and/or acceleration, wherein a value for the attribute is a velocity and/or acceleration derived from location hypotheses generated by a fixed FOM over some (recent) time period.

In a general context, the attribute comparison module 1462 operates according to the following premise:

(38.1) for each of two or more currently active location hypotheses (with, e.g., positive confidences) if:

-   -   (a) each of these currently active location hypotheses, H, was         initially generated by a corresponding different FOM_(H);     -   (b) for a given MS estimate attribute and each such currently         active location hypothesis, H, there is a corresponding value         for the attribute (e.g., the attribute value might be an MS path         estimate, or alternatively an MS estimated velocity, or an MS         estimated acceleration), wherein the attribute value is derived         without using a FOM different from FOM_(H), and;     -   (c) the derived attribute values cluster sufficiently well,         then each of these currently active location hypotheses, H, will         have their corresponding confidences increased. That is, these         confidences will be increased by a confidence adjustment value         or delta.

Note that the phrase “cluster sufficiently well” above may have a number of technical embodiments, including performing various cluster analysis techniques wherein any clusters (according to some statistic) must satisfy a system set threshold for the members of the cluster being close enough to one another. Further, upon determining the (any) location hypotheses satisfying (38.1), there are various techniques that may be used in determining a change or delta in confidences to be applied. For example, in one embodiment, an initial default confidence delta that may be utilized is: if “cf” denotes the confidence of such a currently active location hypothesis satisfying (38.1), then an increased confidence that still remains in the interval [0, 1.0] may be: cf+[(1−cf/(1+cf)]², or, cf*[1.0+cf^(n)], n.=>2, or, cf*[a constant having a system tuned parameter as a factor]. That is, the confidence deltas for these examples are: [(1−cf)/(1+cf)]² (an additive delta), and, [1.0+cf^(n)] (a multiplicative delta), and a constant. Additionally, note that it is within the scope of the present disclosure to also provide such confidence deltas (additive deltas or multiplicative deltas) with factors related to the number of such location hypotheses in the cluster.

Moreover, note that it is an aspect of the present disclosure to provide an adaptive mechanism (i.e., the adaptation engine 1382 shown in FIGS. 5, 6 and 8) for automatically determining performance enhancing changes in confidence adjustment values such as the confidence deltas for the present module. That is, such changes are determined by applying an adaptive mechanism, such as a genetic algorithm, to a collection of “system parameters” (including parameters specifying confidence adjustment values as well as system parameters of, for example, the context adjuster 1326) in order to enhance performance of an embodiment of the present disclosure. More particularly, such an adaptive mechanism may repeatedly perform the following steps:

-   -   (a) modify such system parameters;     -   (b) consequently activate an instantiation of the location         engine 139 (having the modified system parameters) to process,         as input, a series of MS signal location data that has been         archived together with data corresponding to a verified MS         location from which signal location data was transmitted (e.g.,         such data as is stored in the location signature data base         1320); and     -   (c) then determine if the modifications to the system parameters         enhanced location engine 139 performance in comparison to         previous performances.

Assuming this module adjusts confidences of currently active location hypotheses according to one or more of the attributes: target MS path data, target MS velocity, and target MS acceleration, the computation for this module may be summarized in the following steps:

-   -   (a) Determine if any of the currently active location hypotheses         satisfy the premise (38.1) for the attribute. Note that in         making this determination, average distances and average         standard deviations for the paths (velocities and/or         accelerations) corresponding to currently active location         hypotheses may be computed.     -   (b) For each currently active location hypothesis (wherein “i”         uniquely identifies the location hypothesis) selected to have         its confidence increased, a confidence adjustment value,         path_similar(i) (alternatively, velocity_similar(i) and/or         acceleration similar(i)), is computed indicating the extent to         which the attribute value matches another attribute value being         predicted by another FOM.

Note that such confidence adjustment values are used later in the calculation of an aggregate confidence adjustment to particular currently active location hypotheses.

(K.5.1.4) Analytical Reasoner Controller

Given one or more currently active location hypotheses for the same target MS input to the analytical reasoner controller 1466 (FIG. 7), this controller activates, for each such input location hypothesis, the other submodules of the analytical reasoner module 1416 (denoted hereinafter as “adjustment submodules”) with this location hypothesis. Subsequently, the analytical reasoner controller 1466 receives an output confidence adjustment value computed by each adjustment submodule for adjusting the confidence of this location hypothesis. Note that each adjustment submodule determines:

-   -   (a) whether the adjustment submodule may appropriately compute a         confidence adjustment value for the location hypothesis supplied         by the controller. (For example, in some cases there may not be         a sufficient number of location hypotheses in a time series from         a fixed FOM);     -   (b) if appropriate, then the adjustment submodule computes a         non-zero confidence adjustment value that is returned to the         analytical reasoner controller.

Subsequently, the controller uses the output from the adjustment submodules to compute an aggregate confidence adjustment for the corresponding location hypothesis. In one particular embodiment of the present disclosure, values for the eight types of confidence adjustment values (described in sections above) are output to the present controller for computing an aggregate confidence adjustment value for adjusting the confidence of the currently active location hypothesis presently being analyzed by the analytical reasoner module 1416. As an example of how such confidence adjustment values may be utilized, assuming a currently active location hypothesis is identified by “i”, the outputs from the above described adjustment submodules may be more fully described as:

path_match(i) 1 if there are sufficient previous (and recent) location hypotheses for the same target MS as “i” that have been generated by the same FOM that generated “i”, and, the target MS location estimates provided by the location hypothesis “i” and the previous location hypotheses follow a known transportation pathway. 0 otherwise. vel_ok(i) 1 if the velocity calculated for the i^(th) currently active location hypothesis (assuming adequate corresponding path information) is typical for the area (and the current environmental characteristics) of this location hypothesis' target MS location estimate; 0.2 if the velocity calculated for the i^(th) currently active location hypothesis is near a maximum for the area (and the current environmental characteristics) of this location hypothesis' target MS location estimate;. 0 if the velocity calculated is above the maximum. acc_ok(i) 1 if the acceleration calculated for the i^(th) currently active location hypothesis (assuming adequate corresponding path information) is typical for the area (and the current environmental characteristics) of this location hypothesis' target MS location estimate; 0.2 if the acceleration calculated for the i^(th) currently active location hypothesis is near a maximum for the area (and the current environmental characteristics) of this location hypothesis' target MS location estimate;. 0 if the acceleration calculated is above the maximum. similar_path(i) 1 if the location hypothesis “i” satisfies (38.1) for the target MS path data attribute; 0 otherwise. velocity_similar(i) 1 if the location hypothesis “i” satisfies (38.1) for the target MS velocity attribute; 0 otherwise. acceleration_similar(i) 1 if the location hypothesis “i” satisfies (38.1) for the target MS acceleration attribute; 0 otherwise. extrapolation_chk(i) 1 if the location hypothesis “i” is “near” a previously predicted MS location for the target MS; 0 otherwise.

Additionally, for each of the above confidence adjustments, there is a corresponding location engine 139 system setable parameter whose value may be determined by repeated activation of the adaptation engine 1382. Accordingly, for each of the confidence adjustment types, T, above, there is a corresponding system setable parameter, “alpha_T”, that is tunable by the adaptation engine 1382. Accordingly, the following high level program segment illustrates the aggregate confidence adjustment value computed by the Analytical Reasoner Controller.

target_MS_loc_hyps ← get all currently active location hypotheses, H, identifying the present target ; for each currently active location hypothesis, hyp(i), from target_MS_loc_hyps do {   for each of the confidence adjustment submodules, CA, do     activate CA with hyp(i) as input;   /* now compute the aggregate confidence adjustment using the output    from the confidence adjustment submodules. */  aggregate_adjustment(i) ← alpha_path_match * path_match(i)         + alpha_velocity * vel_ok(i)         + alpha_path_similar * path_similar(i)         + alpha_velocity_similar * velocity_similar(i)         + alpha_acceleration_similar* acceleration_similar(i)         + alpha_extrapolation * extrapolation_chk(i);  hyp(i).confidence ← hyp(i).confidence + aggregate_adjustment(i); }

(K.5.2) Historical Location Reasoner

The historical location reasoner module 1424 (FIG. 7) may be, for example, a daemon or expert system rule base. The module adjusts the confidences of currently active location hypotheses by using (from location signature data base 1320) historical signal data correlated with: (a) verified MS locations (e.g. locations verified when emergency personnel co-locate with a target MS location), and (b) various environmental factors to evaluate how consistent the location signature cluster for an input location hypothesis agrees with such historical signal data.

This reasoner will increase/decrease the confidence of a currently active location hypothesis depending on how well its associated loc sigs correlate with the loc sigs obtained from data in the location signature data base.

Note that the embodiment hereinbelow is but one of many embodiments that may adjust the confidence of currently active location hypotheses appropriately. Accordingly, it is important to note other embodiments of the historical location reasoner functionality are within the scope of the present disclosure as one skilled in the art will appreciate upon examining the techniques utilized within this specification. For example, calculations of a confidence adjustment factor may be determined using Monte Carlo techniques as in the context adjuster 1326. Each such embodiment generates a measurement of at least one of the similarity and the discrepancy between the signal characteristics of the verified location signature clusters in the location signature data base and the location signature cluster for an input currently active location hypothesis, “loc_hyp”.

The embodiment hereinbelow provides one example of the functionality that can be provided by the historical location reasoner 1424 (either by activating the following programs as a daemon or by transforming various program segments into the consequents of expert system rules). The present embodiment generates such a confidence adjustment by the following steps:

-   -   (a) comparing, for each cell in a mesh covering of the most         relevant MS location estimate in “loc_hyp”, the location         signature cluster of the “loc_hyp” with the verified location         signature clusters in the cell so that the following are         computed: (i) a discrepancy or error measurement is determined,         and (ii) a corresponding measurement indicating a likelihood or         confidence of the discrepancy measurement being relatively         accurate in comparison to other such error measurements;     -   (b) computing an aggregate measurement of both the errors and         the confidences determined in (a); and     -   (c) using the computed aggregate measurement of (b) to adjust         the confidence of “loc_hyp”.

The program illustrated in APPENDIX E provides a more detailed embodiment of the steps immediately above.

(K.5.3) Location Extrapolator

The location extrapolator 1432 (FIG. 7) works on the following premise: if for a currently active location hypothesis there is sufficient previous related information regarding estimates of the target MS (e.g., from the same FOM or from using a “most likely” previous target MS estimate output by the location engine 139), then an extrapolation may be performed for predicting future target MS locations that can be compared with new location hypotheses provided to the blackboard. Note that interpolation routines (e.g., conventional algorithms such as Lagrange or Newton polynomials) may be used to determine an equation that approximates a target MS path corresponding to a currently active location hypothesis.

Subsequently, such an extrapolation equation may be used to compute a future target MS location. For further information regarding such interpolation schemes, the following reference is incorporated herein by reference: Mathews, 1992, Numerical methods for mathematics, science, and engineering. Englewood Cliffs, N.J.: Prentice Hall.

Accordingly, if a new currently active location hypothesis (e.g., supplied by the context adjuster) is received by the blackboard, then the target MS location estimate of the new location hypothesis may be compared with the predicted location. Consequently, a confidence adjustment value can be determined according to how well the new location hypothesis “i” fits with the predicted location. That is, this confidence adjustment value will be larger as the new MS estimate and the predicted estimate become closer together.

Note that in one embodiment of the present disclosure, such predictions are based solely on previous target MS location estimates output by location engine 139. Thus, in such an embodiment, substantially every currently active location hypothesis can be provided with a confidence adjustment value by this module once a sufficient number of previous target MS location estimates have been output. Accordingly, a value, extrapolation_chk(i), that represents how accurately the new currently active location hypothesis (identified here by “i”) matches the predicted location is determined.

(K.5.4) Hypothesis Generating Module

The hypothesis generating module 1428 (FIG. 7) is used for generating additional location hypotheses according to, for example, MS location information not adequately utilized or modeled. Note, location hypotheses may also be decomposed here if, for example it is determined that a location hypothesis includes an MS area estimate that has subareas with radically different characteristics such as an area that includes an uninhabited area and a densely populated area. Additionally, the hypothesis generating module 1428 may generate “poor reception” location hypotheses that specify MS location areas of known poor reception that are “near” or intersect currently active location hypotheses. Note, that these poor reception location hypotheses may be specially tagged (e.g., with a distinctive FOM_ID value or specific tag field) so that regardless of substantially any other location hypothesis confidence value overlapping such a poor reception area, such an area will maintain a confidence value of “unknown” (i.e., zero). Note that substantially the only exception to this constraint is location hypotheses generated from mobile base stations 148.

(L) Mobile Base Station Location Subsystem Description (L.1) Mobile Base Station Subsystem Introduction

Any collection of mobile electronics (denoted mobile location unit) that is able to both estimate a location of a target MS 140 and communicate with the base station network may be utilized by an embodiment of the present disclosure to more accurately locate the target MS. Such mobile location units may provide greater target MS location accuracy by, for example, homing in on the target MS and by transmitting additional MS location information to the location center 142. There are a number of embodiments for such a mobile location unit contemplated by the present disclosure. For example, in a minimal version, such the electronics of the mobile location unit may be little more than an onboard MS 140, a sectored/directional antenna and a controller for communicating between them. Thus, the onboard MS is used to communicate with the location center 142 and possibly the target MS 140, while the antenna monitors signals for homing in on the target MS 140. In an enhanced version of the mobile location unit, a GPS receiver may also be incorporated so that the location of the mobile location unit may be determined and consequently an estimate of the location of the target MS may also be determined. However, such a mobile location unit is unlikely to be able to determine substantially more than a direction of the target MS 140 via the sectored/directional antenna without further base station infrastructure cooperation in, for example, determining the transmission power level of the target MS or varying this power level. Thus, if the target MS or the mobile location unit leaves the coverage area 120 or resides in a poor communication area, it may be difficult to accurately determine where the target MS is located. None-the-less, such mobile location units may be sufficient for many situations, and in fact the present disclosure contemplates their use. However, in cases where direct communication with the target MS is desired without constant contact with the base station infrastructure, an embodiment of the present disclosure includes a mobile location unit that is also a scaled down version of a base station 122. Thus, given that such a mobile base station or MBS 148 includes at least an onboard MS 140, a sectored/directional antenna, a GPS receiver, a scaled down base station 122 and sufficient components (including a controller) for integrating the capabilities of these devices, an enhanced autonomous MS mobile location system can be provided that can be effectively used in, for example, emergency vehicles, airplanes and boats. Accordingly, the description that follows below describes an embodiment of an MBS 148 having the above mentioned components and capabilities for use in a vehicle.

As a consequence of the MBS 148 being mobile, there are fundamental differences in the operation of an MBS in comparison to other types of BS's 122 (152). In particular, other types of base stations have fixed locations that are precisely determined and known by the location center, whereas a location of an MBS 148 may be known only approximately and thus may require repeated and frequent re-estimating. Secondly, other types of base stations have substantially fixed and stable communication with the location center (via possibly other BS's in the case of LBSs 152) and therefore although these BS's may be more reliable in their in their ability to communicate information related to the location of a target MS with the location center, accuracy can be problematic in poor reception areas. Thus, MBS's may be used in areas (such as wilderness areas) where there may be no other means for reliably and cost effectively locating a target MS 140 (i.e., there may be insufficient fixed location BS's coverage in an area).

FIG. 11 provides a high level block diagram architecture of one embodiment of the MBS location subsystem 1508. Accordingly, an MBS may include components for communicating with the fixed location BS network infrastructure and the location center 142 via an on-board transceiver 1512 that is effectively an MS 140 integrated into the location subsystem 1508. Thus, if the MBS 148 travels through an area having poor infrastructure signal coverage, then the MBS may not be able to communicate reliably with the location center 142 (e.g., in rural or mountainous areas having reduced wireless telephony coverage). So it is desirable that the MBS 148 must be capable of functioning substantially autonomously from the location center. In one embodiment, this implies that each MBS 148 must be capable of estimating both its own location as well as the location of a target MS 140.

Additionally, many commercial wireless telephony technologies require all BS's in a network to be very accurately time synchronized both for transmitting MS voice communication as well as for other services such as MS location. Accordingly, the MBS 148 will also require such time synchronization. However, since an MBS 148 may not be in constant communication with the fixed location BS network (and indeed may be off-line for substantial periods of time), on-board highly accurate timing device may be necessary. In one embodiment, such a device may be a commercially available ribidium oscillator 1520 as shown in FIG. 11.

Since the MBS 148, includes a scaled down version of a BS 122 (denoted 1522 in FIG. 11), it is capable of performing most typical BS 122 tasks, albeit on a reduced scale. In particular, the base station portion of the MBS 148 can:

-   -   (a) raise/lower its pilot channel signal strength,     -   (b) be in a state of soft hand-off with an MS 140, and/or     -   (c) be the primary BS 122 for an MS 140, and consequently be in         voice communication with the target MS (via the MBS operator         telephony interface 1524) if the MS supports voice         communication.         Further, the MBS 148 can, if it becomes the primary base station         communicating with the MS 140, request the MS to raise/lower its         power or, more generally, control the communication with the MS         (via the base station components 1522). However, since the MBS         148 will likely have substantially reduced telephony traffic         capacity in comparison to a standard infrastructure base station         122, note that the pilot channel for the MBS is preferably a         nonstandard pilot channel in that it should not be identified as         a conventional telephony traffic bearing BS 122 by MS's seeking         normal telephony communication. Thus, a target MS 140 requesting         to be located may, depending on its capabilities, either         automatically configure itself to scan for certain predetermined         MBS pilot channels, or be instructed via the fixed location base         station network (equivalently BS infrastructure) to scan for a         certain predetermined MBS pilot channel.

Moreover, the MBS 148 has an additional advantage in that it can substantially increase the reliability of communication with a target MS 140 in comparison to the base station infrastructure by being able to move toward or track the target MS 140 even if this MS is in (or moves into) a reduced infrastructure base station network coverage area. Furthermore, an MBS 148 may preferably use a directional or smart antenna 1526 to more accurately locate a direction of signals from a target MS 140. Thus, the sweeping of such a smart antenna 1526 (physically or electronically) provides directional information regarding signals received from the target MS 140. That is, such directional information is determined by the signal propagation delay of signals from the target MS 140 to the angular sectors of one of more directional antennas 1526 on-board the MBS 148.

Before proceeding to further details of the MBS location subsystem 1508, an example of the operation of an MBS 148 in the context of responding to a 911 emergency call is given. In particular, this example describes the high level computational states through which the MBS 148 transitions, these states also being illustrated in the state transition diagram of FIG. 12. Note that this figure illustrates the primary state transitions between these MBS 148 states, wherein the solid state transitions are indicative of a typical “ideal” progression when locating or tracking a target MS 140, and the dashed state transitions are the primary state reversions due, for example, to difficulties in locating the target MS 140.

Accordingly, initially the MBS 148 may be in an inactive state 1700, wherein the MBS location subsystem 1508 is effectively available for voice or data communication with the fixed location base station network, but the MS 140 locating capabilities of the MBS are not active. From the inactive state 1700 the MBS (e.g., a police or rescue vehicle) may enter an active state 1704 once an MBS operator has logged onto the MBS location subsystem of the MBS, such logging being for authentication, verification and journaling of MBS 148 events. In the active state 1704, the MBS may be listed by a 911 emergency center and/or the location center 142 as eligible for service in responding to a 911 request. From this state, the MBS 148 may transition to a ready state 1708 signifying that the MBS is ready for use in locating and/or intercepting a target MS 140. That is, the MBS 148 may transition to the ready state 1708 by performing the following steps:

-   -   (1a) Synchronizing the timing of the location subsystem 1508         with that of the base station network infrastructure. In one         embodiment, when requesting such time synchronization from the         base station infrastructure, the MBS 148 will be at a         predetermined or well known location so that the MBS time         synchronization may adjust for a known amount of signal         propagation delay in the synchronization signal.     -   (1b) Establishing the location of the MBS 148. In one         embodiment, this may be accomplished by, for example, an MBS         operator identifying the predetermined or well known location at         which the MBS 148 is located.     -   (1c) Communicating with, for example, the 911 emergency center         via the fixed location base station infrastructure to identify         the MBS 148 as in the ready state.

Thus, while in the ready state 1708, as the MBS 148 moves, it has its location repeatedly (re)-estimated via, for example, GPS signals, location center 142 location estimates from the base stations 122 (and 152), and an on-board deadreckoning subsystem 1527 having an MBS location estimator according to the programs described hereinbelow. However, note that the accuracy of the base station time synchronization (via the ribidium oscillator 1520) and the accuracy of the MBS 148 location may need to both be periodically recalibrated according to (1a) and (1b) above.

Assuming a 911 signal is transmitted by a target MS 140, this signal is transmitted, via the fixed location base station infrastructure, to the 911 emergency center and the location center 142, and assuming the MBS 148 is in the ready state 1708, if a corresponding 911 emergency request is transmitted to the MBS (via the base station infrastructure) from the 911 emergency center or the location center, then the MBS may transition to a seek state 1712 by performing the following steps:

-   -   (2a) Communicating with, for example, the 911 emergency response         center via the fixed location base station network to receive         the PN code for the target MS to be located (wherein this         communication is performed using the MS-like transceiver 1512         and/or the MBS operator telephony interface 1524).     -   (2b) Obtaining a most recent target MS location estimate from         either the 911 emergency center or the location center 142.     -   (2c) Inputting by the MBS operator an acknowledgment of the         target MS to be located, and transmitting this acknowledgment to         the 911 emergency response center via the transceiver 1512.

Subsequently, when the MBS 148 is in the seek state 1712, the MBS may commence toward the target MS location estimate provided. Note that it is likely that the MBS is not initially in direct signal contact with the target MS. Accordingly, in the seek state 1712 the following steps may be, for example, performed:

-   -   (3a) The location center 142 or the 911 emergency response         center may inform the target MS, via the fixed location base         station network, to lower its threshold for soft hand-off and at         least periodically boost its location signal strength.         Additionally, the target MS may be informed to scan for the         pilot channel of the MBS 148. (Note the actions here are not,         actions performed by the MBS 148 in the “seek state”; however,         these actions are given here for clarity and completeness.)     -   (3b) Repeatedly, as sufficient new MS location information is         available, the location center 142 provides new MS location         estimates to the MBS 148 via the fixed location base station         network.     -   (3c) The MBS repeatedly provides the MBS operator with new         target MS location estimates provided substantially by the         location center via the fixed location base station network.     -   (3d) The MBS 148 repeatedly attempts to detect a signal from the         target MS using the PN code for the target MS.     -   (3e) The MBS 148 repeatedly estimates its own location (as in         other states as well), and receives MBS location estimates from         the location center.

Assuming that the MBS 148 and target MS 140 detect one another (which typically occurs when the two units are within 0.25 to 3 miles of one another), the MBS enters a contact state 1716 when the target MS 140 enters a soft hand-off state with the MBS. Accordingly, in the contact state 1716, the following steps are, for example, performed:

-   -   (4a) The MBS 148 repeatedly estimates its own location.     -   (4b) Repeatedly, the location center 142 provides new target MS         140 and MBS location estimates to the MBS 148 via the fixed         location base station infrastructure network.     -   (4c) Since the MBS 148 is at least in soft hand-off with the         target MS 140, the MBS can estimate the direction and distance         of the target MS itself using, for example, detected target MS         signal strength and TOA as well as using any recent location         center target MS location estimates.     -   (4d) The MBS 148 repeatedly provides the MBS operator with new         target MS location estimates provided using MS location         estimates provided by the MBS itself and by the location center         via the fixed location base station network.

When the target MS 140 detects that the MBS pilot channel is sufficiently strong, the target MS may switch to using the MBS 148 as its primary base station. When this occurs, the MBS enters a control state 1720, wherein the following steps are, for example, performed:

-   -   (5a) The MBS 148 repeatedly estimates its own location.     -   (5b) Repeatedly, the location center 142 provides new target MS         and MBS location estimates to the MBS 148 via the network of         base stations 122 (152).     -   (5c) The MBS 148 estimates the direction and distance of the         target MS 140 itself using, for example, detected target MS         signal strength and TOA as well as using any recent location         center target MS location estimates.     -   (5d) The MBS 148 repeatedly provides the MBS operator with new         target MS location estimates provided using MS location         estimates provided by the MBS itself and by the location center         142 via the fixed location base station network.     -   (5e) The MBS 148 becomes the primary base station for the target         MS 140 and therefore controls at least the signal strength         output by the target MS.

Note, there can be more than one MBS 148 tracking or locating an MS 140. There can also be more than one target MS 140 to be tracked concurrently and each target MS being tracked may be stationary or moving.

(L.2) MBS Subsystem Architecture

An MBS 148 uses MS signal characteristic data for locating the MS 140. The MBS 148 may use such signal characteristic data to facilitate determining whether a given signal from the MS is a “direct shot” or an multipath signal. That is, in one embodiment, the MBS 148 attempts to determine or detect whether an MS signal transmission is received directly, or whether the transmission has been reflected or deflected. For example, the MBS may determine whether the expected signal strength, and TOA agree in distance estimates for the MS signal transmissions. Note, other signal characteristics may also be used, if there are sufficient electronics and processing available to the MBS 148; i.e., determining signal phase and/or polarity as other indications of receiving a “direct shot” from an MS 140.

In one embodiment, the MBS 148 (FIG. 11) includes an MBS controller 1533 for controlling the location capabilities of the MBS 148. In particular, the MBS controller 1533 initiates and controls the MBS state changes as described in FIG. 12 above. Additionally, the MBS controller 1533 also communicates with the location controller 1535, wherein this latter controller controls MBS activities related to MBS location and target MS location; e.g., this performs the program, “mobile_base_station_controller” described in APPENDIX A hereinbelow. The location controller 1535 receives data input from an event generator 1537 for generating event records to be provided to the location controller 1535. For example, records may be generated from data input received from: (a) the vehicle movement detector 1539 indicating that the MBS 148 has moved at least a predetermined amount and/or has changed direction by at least a predetermined angle, or (b) the MBS signal processing subsystem 1541 indicating that the additional signal measurement data has been received from either the location center 142 or the target MS 140. Note that the MBS signal processing subsystem 1541, in one embodiment, is similar to the signal processing subsystem 1220 of the location center 142. Moreover, also note that there may be multiple command schedulers. In particular, a scheduler 1528 for commands related to communicating with the location center 142, a scheduler 1530 for commands related to GPS communication (via GPS receiver 1531), a scheduler 1529 for commands related to the frequency and granularity of the reporting of MBS changes in direction and/or position via the MBS deadreckoning subsystem 1527 (note that this scheduler is potentially optional and that such commands may be provided directly to the deadreckoning estimator 1544), and a scheduler 1532 for communicating with the target MS(s) 140 being located. Further, it is assumed that there is sufficient hardware and/or software to perform commands in different schedulers substantially concurrently.

In order to display an MBS computed location of a target MS 140, a location of the MBS must be known or determined. Accordingly, each MBS 148 has a plurality of MBS location estimators (or hereinafter also simply referred to as location estimators) for determining the location of the MBS. Each such location estimator computes MBS location information such as MBS location estimates, changes to MBS location estimates, or, an MBS location estimator may be an interface for buffering and/or translating a previously computed MBS location estimate into an appropriate format. In particular, the MBS location module 1536, which determines the location of the MBS, may include the following MBS location estimators 1540 (also denoted baseline location estimators):

-   -   (a) a GPS location estimator 1540 a (not individually shown) for         computing an MBS location estimate using GPS signals,     -   (b) a location center location estimator 1540 b (not         individually shown) for buffering and/or translating an MBS         estimate received from the location center 142,     -   (c) an MBS operator location estimator 1540 c (not individually         shown) for buffering and/or translating manual MBS location         entries received from an MBS location operator, and     -   (d) in some MBS embodiments, an LBS location estimator 1540 d         (not individually shown) for the activating and deactivating of         LBS's 152. Note that, in high multipath areas and/or stationary         base station marginal coverage areas, such low cost location         base stations 152 (LBS) may be provided whose locations are         fixed and accurately predetermined and whose signals are         substantially only receivable within a relatively small range         (e.g., 2000 feet), the range potentially being variable. Thus,         by communicating with the LBS's 152 directly, the MBS 148 may be         able to quickly use the location information relating to the         location base stations for determining its location by using         signal characteristics obtained from the LBSs 152.         Note that each of the MBS baseline location estimators 1540,         such as those above, provide an actual MBS location rather than,         for example, a change in an MBS location. Further note that it         is an aspect of the present disclosure that additional MBS         baseline location estimators 1540 may be easily integrated into         the MBS location subsystem 1508 as such baseline location         estimators become available. For example, a baseline location         estimator that receives MBS location estimates from reflective         codes provided, for example, on streets or street signs can be         straightforwardly incorporated into the MBS location subsystem         1508.

Additionally, note that a plurality of MBS location technologies and their corresponding MBS location estimators are utilized due to the fact that there is currently no single location technology available that is both sufficiently fast, accurate and accessible in substantially all terrains to meet the location needs of an MBS 148. For example, in many terrains GPS technologies may be sufficiently accurate; however, GPS technologies: (a) may require a relatively long time to provide an initial location estimate (e.g., greater than 2 minutes); (b) when GPS communication is disturbed, it may require an equally long time to provide a new location estimate; (c) clouds, buildings and/or mountains can prevent location estimates from being obtained; (d) in some cases signal reflections can substantially skew a location estimate. As another example, an MBS 148 may be able to use triangulation or trilateralization technologies to obtain a location estimate; however, this assumes that there is sufficient (fixed location) infrastructure BS coverage in the area the MBS is located. Further, it is well known that the multipath phenomenon can substantially distort such location estimates. Thus, for an MBS 148 to be highly effective in varied terrains, an MBS is provided with a plurality of location technologies, each supplying an MBS location estimate.

In fact, much of the architecture of the location engine 139 could be incorporated into an MBS 148. For example, in some embodiments of the MBS 148, the following FOMs 1224 may have similar location models incorporated into the MBS:

-   -   (a) a variation of the distance FOM 1224 wherein TOA signals         from communicating fixed location BS's are received (via the MBS         transceiver 1512) by the MBS and used for providing a location         estimate;     -   (b) a variation of the artificial neural net based FOMs 1224 (or         more generally a location learning or a classification model)         may be used to provide MBS location estimates via, for example,         learned associations between fixed location BS signal         characteristics and geographic locations;     -   (c) an LBS location FOM 1224 for providing an MBS with the         ability to activate and deactivate LBS's to provide (positive)         MBS location estimates as well as negative MBS location regions         (i.e., regions where the MBS is unlikely to be since one or more         LBS's are not detected by the MBS transceiver);     -   (d) one or more MBS location reasoning agents and/or a location         estimate heuristic agents for resolving MBS location estimate         conflicts and providing greater MBS location estimate accuracy.         For example, modules similar to the analytical reasoner module         1416 and the historical location reasoner module 1424.

However, for those MBS location models requiring communication with the base station infrastructure, an alternative embodiment is to rely on the location center 142 to perform the computations for at least some of these MBS FOM models. That is, since each of the MBS location models mentioned immediately above require communication with the network of fixed location BS's 122 (152), it may be advantageous to transmit MBS location estimating data to the location center 142 as if the MBS were another MS 140 for the location center to locate, and thereby rely on the location estimation capabilities at the location center rather than duplicate such models in the MBS 148. The advantages of this approach are that:

-   -   (a) an MBS is likely to be able to use less expensive processing         power and software than that of the location center;     -   (b) an MBS is likely to require substantially less memory,         particularly for data bases, than that of the location center.

As will be discussed further below, in one embodiment of the MBS 148, there are confidence values assigned to the locations output by the various location estimators 1540. Thus, the confidence for a manual entry of location data by an MBS operator may be rated the highest and followed by the confidence for (any) GPS location data, followed by the confidence for (any) location center location 142 estimates, followed by the confidence for (any) location estimates using signal characteristic data from LBSs. However, such prioritization may vary depending on, for instance, the radio coverage area 120. In an one embodiment of the present disclosure, it is an aspect of the present disclosure that for MBS location data received from the GPS and location center, their confidences may vary according to the area in which the MBS 148 resides. That is, if it is known that for a given area, there is a reasonable probability that a GPS signal may suffer multipath distortions and that the location center has in the past provided reliable location estimates, then the confidences for these two location sources may be reversed.

In one embodiment of the present disclosure, MBS operators may be requested to occasionally manually enter the location of the MBS 148 when the MBS is stationary for determining and/or calibrating the accuracy of various MBS location estimators.

There is an additional important source of location information for the MBS 148 that is incorporated into an MBS vehicle (such as a police vehicle) that has no comparable functionality in the network of fixed location BS's. That is, the MBS 148 may use deadreckoning information provided by a deadreckoning MBS location estimator 1544 whereby the MBS may obtain MBS deadreckoning location change estimates. Accordingly, the deadreckoning MBS location estimator 1544 may use, for example, an on-board gyroscope 1550, a wheel rotation measurement device (e.g., odometer) 1554, and optionally an accelerometer (not shown). Thus, such a deadreckoning MBS location estimator 1544 periodically provides at least MBS distance and directional data related to MBS movements from a most recent MBS location estimate. More precisely, in the absence of any other new MBS location information, the deadreckoning MBS location estimator 1544 outputs a series of measurements, wherein each such measurement is an estimated change (or delta) in the position of the MBS 148 between a request input timestamp and a closest time prior to the timestamp, wherein a previous deadreckoning terminated. Thus, each deadreckoning location change estimate includes the following fields:

-   -   (a) an “earliest timestamp” field for designating the start time         when the deadreckoning location change estimate commences         measuring a change in the location of the MBS;     -   (b) a “latest timestamp” field for designating the end time when         the deadreckoning location change estimate stops measuring a         change in the location of the MBS; and     -   (c) an MBS location change vector.         That is, the “latest timestamp” is the timestamp input with a         request for deadreckoning location data, and the “earliest         timestamp” is the timestamp of the closest time, T, prior to the         latest timestamp, wherein a previous deadreckoning output has         its a timestamp at a time equal to T.

Further, the frequency of such measurements provided by the deadreckoning subsystem 1527 may be adaptively provided depending on the velocity of the MBS 148 and/or the elapsed time since the most recent MBS location update. Accordingly, the architecture of at least some embodiments of the MBS location subsystem 1508 must be such that it can utilize such deadreckoning information for estimating the location of the MBS 148.

In one embodiment of the MBS location subsystem 1508 described in further detail hereinbelow, the outputs from the deadreckoning MBS location estimator 1544 are used to synchronize MBS location estimates from different MBS baseline location estimators. That is, since such a deadreckoning output may be requested for substantially any time from the deadreckoning MBS location estimator, such an output can be requested for substantially the same point in time as the occurrence of the signals from which a new MBS baseline location estimate is derived. Accordingly, such a deadreckoning output can be used to update other MBS location estimates not using the new MBS baseline location estimate.

It is assumed that the error with deadreckoning increases with deadreckoning distance. Accordingly, it is an aspect of the embodiment of the MBS location subsystem 1508 that when incrementally updating the location of the MBS 148 using deadreckoning and applying deadreckoning location change estimates to a “most likely area” in which the MBS 148 is believed to be, this area is incrementally enlarged as well as shifted. The enlargement of the area is used to account for the inaccuracy in the deadreckoning capability. Note, however, that the deadreckoning MBS location estimator is periodically reset so that the error accumulation in its outputs can be decreased. In particular, such resetting occurs when there is a high probability that the location of the MBS is known. For example, the deadreckoning MBS location estimator may be reset when an MBS operator manually enters an MBS location or verifies an MBS location, or a computed MBS location has sufficiently high confidence.

Thus, due to the MBS 148 having less accurate location information (both about itself and a target MS 140), and further that deadreckoning information must be utilized in maintaining MBS location estimates, a first embodiment of the MBS location subsystem architecture is somewhat different from the location engine 139 architecture. That is, the architecture of this first embodiment is simpler than that of the architecture of the location engine 139. However, it important to note that, at a high level, the architecture of the location engine 139 may also be applied for providing a second embodiment of the MBS location subsystem 1508, as one skilled in the art will appreciate after reflecting on the architectures and processing provided at an MBS 148. For example, an MBS location subsystem 1508 architecture may be provided that has one or more first order models 1224 whose output is supplied to, for example, a blackboard or expert system for resolving MBS location estimate conflicts, such an architecture being analogous to one embodiment of the location engine 139 architecture.

Furthermore, it is also an important aspect of the present disclosure that, at a high level, the MBS location subsystem architecture may also be applied as an alternative architecture for the location engine 139. For example, in one embodiment of the location engine 139, each of the first order models 1224 may provide its MS location hypothesis outputs to a corresponding “location track,” analogous to the MBS location tracks described hereinbelow, and subsequently, a most likely MS current location estimate may be developed in a “current location track” (also described hereinbelow) using the most recent location estimates in other location tracks.

Further, note that the ideas and methods discussed here relating to MBS location estimators 1540 and MBS location tracks, and, the related programs hereinbelow are sufficiently general so that these ideas and methods may be applied in a number of contexts related to determining the location of a device capable of movement and wherein the location of the device must be maintained in real time. For example, the present ideas and methods may be used by a robot in a very cluttered environment (e.g., a warehouse), wherein the robot has access: (a) to a plurality of “robot location estimators” that may provide the robot with sporadic location information, and (b) to a deadreckoning location estimator.

Each MBS 148, additionally, has a location display (denoted the MBS operator visual user interface 1558 in FIG. 11) where area maps that may be displayed together with location data. In particular, MS location data may be displayed on this display as a nested collection of areas, each smaller nested area being the most likely area within (any) encompassing area for locating a target MS 140. Note that the MBS controller algorithm below may be adapted to receive location center 142 data for displaying the locations of other MBSs 148 as well as target MSs 140.

Further, the MBS 148 may constrain any location estimates to streets on a street map using the MBS location snap to street module 1562. For example, an estimated MBS location not on a street may be “snapped to” a nearest street location. Note that a nearest street location determiner may use “normal” orientations of vehicles on streets as a constraint on the nearest street location, particularly, if an MBS 148 is moving at typical rates of speed and acceleration, and without abrupt changes in direction. For example, if the deadreckoning MBS location estimator 1544 indicates that the MBS 148 is moving in a northerly direction, then the street snapped to should be a north-south running street. Moreover, the MBS location snap to street module 1562 may also be used to enhance target MS location estimates when, for example, it is known or suspected that the target MS 140 is in a vehicle and the vehicle is moving at typical rates of speed. Furthermore, the snap to street location module 1562 may also be used in enhancing the location of a target MS 140 by either the MBS 148 or by the location engine 139. In particular, the location estimator 1344 or an additional module between the location estimator 1344 and the output gateway 1356 may utilize an embodiment of the snap to street location module 1562 to enhance the accuracy of target MS 140 location estimates that are known to be in vehicles. Note that this may be especially useful in locating stolen vehicles that have embedded wireless location transceivers (MSs 140), wherein appropriate wireless signal measurements can be provided to the location center 142.

(L.3) MBS Data Structure Remarks

Assuming the existence of at least some of the location estimators 1540 that were mentioned above, the discussion here refers substantially to the data structures and their organization as illustrated in FIG. 13.

The location estimates (or hypotheses) for an MBS 148 determining its own location each have an error or range estimate associated with the MBS location estimate. That is, each such MBS location estimate includes a “most likely MBS point location” within a “most likely area”. The “most likely MBS point location” is assumed herein to be the centroid of the “most likely area.” In one embodiment of the MBS location subsystem 1508, a nested series of “most likely areas” may be provided about a most likely MBS point location. However, to simplify the discussion herein each MBS location estimate is assumed to have a single “most likely area”. One skilled in the art will understand how to provide such nested “most likely areas” from the description herein. Additionally, it is assumed that such “most likely areas” are not grossly oblong; i.e., area cross sectioning lines through the centroid of the area do not have large differences in their lengths. For example, for any such “most likely area”, A, no two such cross sectioning lines of A may have lengths that vary by more than a factor of two.

Each MBS location estimate also has a confidence associated therewith providing a measurement of the perceived accuracy of the MBS being in the “most likely area” of the location estimate.

A (MBS) “location track” is a data structure (or object) having a queue of a predetermined length for maintaining a temporal (timestamp) ordering of “location track entries” such as the location track entries 1770 a, 1770 b, 1774 a, 1774 b, 1778 a, 1778 b, 1782 a, 1782 b, and 1786 a (FIG. 13), wherein each such MBS location track entry is an estimate of the location of the MBS at a particular corresponding time.

There is an MBS location track for storing MBS location entries obtained from MBS location estimation information from each of the MBS baseline location estimators described above (i.e., a GPS location track 1750 for storing MBS location estimations obtained from the GPS location estimator 1540, a location center location track 1754 for storing MBS location estimations obtained from the location estimator 1540 deriving its MBS location estimates from the location center 142, an LBS location track 1758 for storing MBS location estimations obtained from the location estimator 1540 deriving its MBS location estimates from base stations 122 and/or 152, and a manual location track 1762 for MBS operator entered MBS locations). Additionally, there is one further location track, denoted the “current location track” 1766 whose location track entries may be derived from the entries in the other location tracks (described further hereinbelow). Further, for each location track, there is a location track head that is the head of the queue for the location track. The location track head is the most recent (and presumably the most accurate) MBS location estimate residing in the location track. Thus, the GPS location track 1750 has location track head 1770; the location center location track 1754 has location track head 1774; the LBS location track 1758 has location track head 1778; the manual location track 1762 has location track head 1782; and the current location track 1766 has location track head 1786. Additionally, for notational convenience, for each location track, the time series of previous MBS location estimations (i.e., location track entries) in the location track will herein be denoted the “path for the location track.” Such paths are typically the length of the location track queue containing the path. Note that the length of each such queue may be determined using at least the following considerations:

-   -   (i) In certain circumstances (described hereinbelow), the         location track entries are removed from the head of the location         track queues so that location adjustments may be made. In such a         case, it may be advantageous for the length of such queues to be         greater than the number of entries that are expected to be         removed;     -   (ii) In determining an MBS location estimate, it may be         desirable in some embodiments to provide new location estimates         based on paths associated with previous MBS location estimates         provided in the corresponding location track queue.         Also note that it is within the scope of the present disclosure         that the location track queue lengths may be a length of one.

Regarding location track entries, each location track entry includes:

-   -   (a) a “derived location estimate” for the MBS that is derived         using at least one of:         -   (i) at least a most recent previous output from an MBS             baseline location estimator 1540 (i.e., the output being an             MBS location estimate);         -   (ii) deadreckoning output information from the deadreckoning             subsystem 1527.     -    Further note that each output from an MBS location estimator         has a “type” field that is used for identifying the MBS location         estimator of the output.     -   (b) an “earliest timestamp” providing the time/date when the         earliest MBS location information upon which the derived         location estimate for the MBS depends. Note this will typically         be the timestamp of the earliest MBS location estimate (from an         MBS baseline location estimator) that supplied MBS location         information used in deriving the derived location estimate for         the MBS 148.     -   (c) a “latest timestamp” providing the time/date when the latest         MBS location information upon which the derived location         estimate for the MBS depends. Note that earliest         timestamp=latest timestamp only for so called “baseline entries”         as defined hereinbelow. Further note that this attribute is the         one used for maintaining the “temporal (timestamp) ordering” of         location track entries.     -   (d) A “deadreckoning distance” indicating the total distance         (e.g., wheel turns or odometer difference) since the most         recently previous baseline entry for the corresponding MBS         location estimator for the location track to which the location         track entry is assigned.

For each MBS location track, there are two categories of MBS location track entries that may be inserted into a MBS location track:

-   -   (a) “baseline” entries, wherein each such baseline entry         includes (depending on the location track) a location estimate         for the MBS 148 derived from: (i) a most recent previous output         either from a corresponding MBS baseline location estimator,         or (ii) from the baseline entries of other location tracks (this         latter case being the for the “current” location track);     -   (b) “extrapolation” entries, wherein each such entry includes an         MBS location estimate that has been extrapolated from the (most         recent) location track head for the location track (i.e., based         on the track head whose “latest timestamp” immediately precedes         the latest timestamp of the extrapolation entry). Each such         extrapolation entry is computed by using data from a related         deadreckoning location change estimate output from the         deadreckoning MBS location estimator 1544. Each such         deadreckoning location change estimate includes measurements         related to changes or deltas in the location of the MBS 148.         More precisely, for each location track, each extrapolation         entry is determined using: (i) a baseline entry, and (ii) a set         of one or more (i.e., all later occurring) deadreckoning         location change estimates in increasing “latest timestamp”         order. Note that for notational convenience this set of one or         more deadreckoning location change estimates will be denoted the         “deadreckoning location change estimate set” associated with the         extrapolation entry resulting from this set.     -   (c) Note that for each location track head, it is either a         baseline entry or an extrapolation entry. Further, for each         extrapolation entry, there is a most recent baseline entry, B,         that is earlier than the extrapolation entry and it is this B         from which the extrapolation entry was extrapolated. This         earlier baseline entry, B, is hereinafter denoted the “baseline         entry associated with the extrapolation entry.” More generally,         for each location track entry, T, there is a most recent         previous baseline entry, B, associated with T, wherein if T is         an extrapolation entry, then B is as defined above, else if T is         a baseline entry itself, then T=B. Accordingly, note that for         each extrapolation entry that is the head of a location track,         there is a most recent baseline entry associated with the         extrapolation entry.

Further, there are two categories of location tracks:

-   -   (a) “baseline location tracks,” each having baseline entries         exclusively from a single predetermined MBS baseline location         estimator; and     -   (b) a “current” MBS location track having entries that are         computed or determined as “most likely” MBS location estimates         from entries in the other MBS location tracks.

(L.4) MBS Location Estimating Strategy

In order to be able to properly compare the track heads to determine the most likely MBS location estimate it is an aspect of the present invention that the track heads of all location tracks include MBS location estimates that are for substantially the same (latest) timestamp. However, the MBS location information from each MBS baseline location estimator is inherently substantially unpredictable and unsynchronized. In fact, the only MBS location information that may be considered predicable and controllable is the deadreckoning location change estimates from the deadreckoning MBS location estimator 1544 in that these estimates may reliably be obtained whenever there is a query from the location controller 1535 for the most recent estimate in the change of the location for the MBS 148. Consequently (referring to FIG. 13), synchronization records 1790 (having at least a 1790 b portion, and in some cases also having a 1790 a portion) may be provided for updating each location track with a new MBS location estimate as a new track head. In particular, each synchronization record includes a deadreckoning location change estimate to be used in updating all but at most one of the location track heads with a new MBS location estimate by using a deadreckoning location change estimate in conjunction with each MBS location estimate from an MBS baseline location estimator, the location track heads may be synchronized according to timestamp. More precisely, for each MBS location estimate, E, from an MBS baseline location estimator, an embodiment of the present disclosure also substantially simultaneously queries the deadreckoning MBS location estimator for a corresponding most recent change in the location of the MBS 148. Accordingly, E and the retrieved MBS deadreckoning location change estimate, C, have substantially the same “latest timestamp”. Thus, the location estimate E may be used to create a new baseline track head for the location track having the corresponding type for E, and C may be used to create a corresponding extrapolation entry as the head of each of the other location tracks. Accordingly, since for each MBS location estimate, E, there is a MBS deadreckoning location change estimate, C, having substantially the same “latest timestamp”, E and C will be hereinafter referred as “paired.”

High level descriptions of an embodiment of the location functions performed by an MBS 148 are provided in APPENDIX A hereinbelow.

Note that in this second embodiment of the Context Adjuster, it uses various heuristics to increment decrement the confidence value of the location hypotheses coming from the First Order Models. These heuristics are implemented using fuzzy mathematics, wherein linguistic, fuzzy “if-then” rules embody the heuristics. That is, each fuzzy rule includes terms in both the “if” and the “then” portions that are substantially described using natural language—like terms to denote various parameter value classifications related to, but not equivalent to, probability density functions. Further note that the Context Adjuster and/or the FOM's may be calibrated using the location information from LBSs (i.e., fixed location BS transceivers), via the Location Base Station Model since such LBS's have well known and accurate predetermined locations.

Regarding the heuristics of the present embodiment of the context adjuster, the following is an example of a fuzzy rule that might appear in this embodiment of the Context Adjuster:

-   -   If <the season is Fall> then <the confidence level of Distance         Model is increased by 5%>.

In the above sample rule, “Distance Model” denotes a First Order Model utilized by an embodiment of the present disclosure. To apply this sample rule, the fuzzy system needs a concrete definition of the term “Fall.” In traditional expert systems, the term Fall would be described by a particular set of months, for example, September through November, in which traditional set theory is applied. In traditional set theory, an entity, in this case a date, is either in a set or it is not in a set, e.g. its degree of membership in a set is either 0, indicating that the entity is not in a particular set, or 1, indicating that the entity is in the set. However, the traditional set theory employed in expert systems does not lend itself well to entities that fall on set boundaries. For example, a traditional expert system could take dramatically different actions for a date of August 31 than it could for a date of September 1 because August 31 might belong to the set “Summer” while the date September 1 might belong to the set “Fall.” This is not a desirable behavior since it is extremely difficult if not impossible to determine such lines of demarcation so accurately. However, fuzzy mathematics allows for the possibility of an entity belonging to multiple sets with varying degrees of confidence ranging from a minimum value of 0 (indicating that the confidence the entity belongs to the particular set is minimum) to 1 (indicating that the confidence the entity belongs to the particular set is maximum). The “fuzzy boundaries” between the various sets are described by fuzzy membership functions which provide a membership function value for each value on the entire range of a variable. As a consequence of allowing entities to belong to multiple sets simultaneously, the fuzzy rule base might have more than one rule that is applicable for any situation.

Thus, the actions prescribed by the individual rules are averaged via a weighting scheme where each rule is implemented in proportion to its minimum confidence. For further information regarding such fuzzy heuristics, the following references are incorporated herein by reference: (McNeil and Freiberger, 1993; Cox, 1994; Klir and Folger, 1999; Zimmerman, 1991).

Thus, the rules defined in the fuzzy rule base in conjunction with the membership functions allow the heuristics for adjusting confidence values to be represented in a linguistic form more readily understood by humans than many other heuristic representations and thereby making it easier to maintain and modify the rules. The fuzzy rule base with its membership functions can be thought of as an extension to a traditional expert system. Thus, since traditional expert systems are subsets of fuzzy systems, an alternative to a fuzzy rule base is a traditional expert system, and it is implicit that anywhere in the description of the current invention that a fuzzy rule base can be replaced with an expert system.

Also, these heuristics may evolve over time by employing adaptive mechanisms including, but not limited to, genetic algorithms to adjust or tune various system values in accordance with past experiences and past performance of the Context Adjuster for increasing the accuracy of the adjustments made to location hypothesis confidence values. For example, in the sample rule presented above:

-   -   If <the season is Fall> then <the confidence level of Distance         Model is increased by 5%>         an adaptive mechanism or optimization routine can be used to         adjust the percent increase in the confidence level of the         Distance Model. For example, by accessing the MS Status         Repository, a genetic algorithm is capable of adjusting the         fuzzy rules and membership functions such that the location         hypotheses are consistent with a majority of the verified MS         locations. In this way, the Context Adjuster is able to employ a         genetic algorithm to improve its performance over time. For         further information regarding such adaptive mechanisms, the         following references are incorporated herein by reference:         (Goldberg, 1989; Holland, 1975). For further information         regarding the tuning of fuzzy systems using such adaptive         mechanisms, the following references are incorporated herein by         reference: (Karr, 1991a, 1991b).

In one embodiment, the Context Adjuster alters the confidence values of location hypotheses according to one or more of the following environmental factors: (1) the type of region (e.g., dense urban, urban, rural, etc.), (2) the month of the year, (3) the time of day, and (4) the operational status of base stations (e.g., on-line or off-line), as well as other environmental factors that may substantially impact the confidence placed in a location hypothesis. Note that in this embodiment, each environmental factor has an associated set of linguistic heuristics and associated membership functions that prescribe changes to be made to the confidence values of the input location hypotheses.

The context adjuster begins by receiving location hypotheses and associated confidence levels from the First Order Models. The Context Adjuster takes this information and improves and refines it based on environmental information using the modules described below.

B.1 COA Calculation Module

As mentioned above each location hypothesis provides an approximation to the MS position in the form of a geometric shape and an associated confidence value, a. The COA calculation module determines a center of area (COA) for each of the geometric shapes, if such a COA is not already provided in a location hypothesis. The COA Calculation Module receives the following information from each First Order Model: (1) a geometrical shape and (2) an associated confidence value, a. The COA calculation is made using traditional geometric computations (numerical algorithms are readily available). Thus, following this step, each location hypothesis includes a COA as a single point that is assumed to represent the most likely approximation of the location of the MS. The COA Calculation Module passes the following information to the fuzzification module: (1) a geometrical shape associated with each first order model 1224, (2) an associated confidence value, and (3) an associated COA.

B.2 Fuzzification Module

A fuzzification module receives the following information from the COA Calculation Module: (1) a geometrical shape associated with each First Order Model, (2) an associated confidence value, and (3) an associated COA. The Fuzzification Module uses this information to compute a membership function value (μ) for each of the M location hypotheses received from the COA calculation module (where the individual models are identified with an i index) for each of the N environmental factors (identified with a j index). In addition to the information received from the COA Calculation Module, the Fuzzification Module receives information from the Location Center Supervisor. The fuzzification module uses current environmental information such as the current time of day, month of year, and information about the base stations on-line for communicating with the MS associated with a location hypothesis currently being processed (this information may include, but is not limited to, the number of base stations of a given type, e.g., location base stations, and regular base stations, that have a previous history of being detected in an area about the COA for a location hypothesis). The base station coverage information is used to compute a percentage of base stations reporting for each location hypothesis.

The fuzzification is achieved in the traditional fashion using fuzzy membership functions for each environmental factor as, for example, is described in the following references incorporated herein by reference: (McNeil and Freiberger, 1993; Cox, 1994; Klir and Folger, 1999; Zimmerman, 1991).

Using the geographical area types for illustration purposes here, the following procedure might be used in the Fuzzification Module. Each value of COA for a location hypothesis is used to compute membership function values (μ) for each of five types of areas: (1) dense urban (μ_(DU)), (2) urban (μ_(U)), (3) suburban (μ_(S)), (4) rural plain (μ_(RP)), and (5) rural mountains (μ_(RM)). These membership function values provide the mechanism for representing degrees of membership in the area types, these area types being determined from an area map that has been sectioned off. In accordance with fuzzy theory, there may be geographical locations that include, for example, both dense urban and urban areas; dense urban and rural plane areas; dense urban, urban, and rural plane areas, etc. Thus for a particular MS location area estimate (described by a COA), it may be both dense urban and urban at the same time. The resolution of any apparent conflict in applicable rules is later resolved in the Defuzzification Module using the fuzzy membership function values (μ) computed in the Fuzzification Module.

Any particular value of a COA can land in more than one area type. For example, the COA may be in both dense urban and urban. Further, in some cases a location hypothesis for a particular First Order Model i may have membership functions μ_(DU) ^(i), μ_(U) ^(i), μ_(S) ^(i), μ_(RP) ^(i), and μ_(RM) ^(i) wherein they all potentially have non-zero values. Additionally, each geographical area is contoured. Note that the membership function contours allow for one distinct value of membership function to be determined for each COA location (i.e., there will be distinct values of μ_(DU) ^(i), μ_(U) ^(i), μ_(S) ^(i), μ_(RP) ^(i), and μ_(RM) ^(i) for any single COA value associated with a particular model i). For example, the COA would have a dense urban membership function value, μ_(DU) ^(i), equal to 0.5. Similar contours would be used to compute values of μ_(U) ^(i), μ_(S) ^(i), μ_(RP) ^(i), and μ_(RM) ^(i).

Thus, for each COA, there now exists an array or series of membership function values; there are K membership function values (K=number of descriptive terms for the specified environmental factor) for each of M First Order Models. Each COA calculation has associated with it a definitive value for μ_(DU) ^(i), μ_(U) ^(i), μ_(S) ^(i), μ_(RP) ^(i), and μ_(RM) ^(i). Taken collectively, the M location hypotheses with membership function values for the K descriptive terms for the particular environmental factor results in a membership function value matrix. Additionally, similar membership function values are computed for each of the N environmental factors, thereby resulting in a corresponding membership function value matrix for each of the N environmental factors.

The Fuzzification Module passes the N membership function value matrices described above to the Rule Base Module along with all of the information it originally received from the COA Calculation Module.

B.3 Rule Base Module

The Rule Base Module receives from the Fuzzification Module the following information: (1) a geometrical shape associated with each First Order Model, (2) an associated confidence value, (3) an associated COA, and (4) N membership function value matrices. The Rule Base Module uses this information in a manner consistent with typical fuzzy rule bases to determine a set of active or applicable rules. Sample rules were provided in the general discussion of the Context Adjuster. Additionally, references have been supplied that describe the necessary computations. Suffice it to say that the Rule Base Modules employ the information provided by the Fuzzification Module to compute confidence value adjustments for each of the m location hypotheses. Associated with each confidence value adjustment is a minimum membership function value contained in the membership function matrices computed in the Fuzzification Module.

For each location hypothesis, a simple inference engine driving the rule base queries the performance database (FIG. 8(3)) to determine how well the location hypotheses for the First Order Model providing the current location hypothesis has performed in the past (for a geographic area surrounding the MS location estimate of the current location hypothesis) under the present environmental conditions. For example, the performance database is consulted to determine how well this particular First Order Model has performed in the past in locating an MS for the given time of day, month of year, and area type. Note that the performance value is a value between 0 and 1 wherein a value of 0 indicates that the model is a poor performer, while a value of 1 indicates that the model is always (or substantially always) accurate in determining an MS location under the conditions (and in the area) being considered. These performance values are used to compute values that are attached to the current confidence of the current location hypothesis; i.e., these performance values serve as the “then” sides of the fuzzy rules; the First Order Models that have been effective in the past have their confidence levels incremented by large amounts while First Order Models that have been ineffective in the past have their confidence levels incremented by small amounts. This information is received from the Performance Database in the form of an environmental factor, a First Order Model number, and a performance value. Accordingly, an intermediate value for the adjustment of the confidence value for the current location hypothesis is computed for each environmental condition (used by Context Adjuster) based on the performance value retrieved from the Performance Database. Each of these intermediate adjustment values are computed according to the following equation which is applicable to area information:

adjustment_(j) ^(i) =Δa _(j) ^(i)=performance_value_(j) *Δa _(REGION) ^(MAX)

where a is the confidence value of a particular location hypothesis, performance_value is the value obtained from the Performance Database, Δa_(REGION) ^(MAX) is a system parameter that accounts for how important the information is being considered by the context adjuster. Furthermore, this parameter is initially provided by an operator in, for example, a system start-up configuration and a reasonable value for this parameter is believed to be in the range 0.05 to 0.1, the subscript j represents a particular environmental factor, and the superscript i represents a particular First Order Model. However, it is an important aspect of the present disclosure that this value can be repeatedly altered by an adaptive mechanism such as a genetic algorithm for improving the MS location accuracy of an embodiment of the present disclosure. In this way, and because the rules are “written” using current performance information as stored in the Performance Database, the Rule Module is dynamic and becomes more accurate with time. The Rule Base Module passes the matrix of adjustments to the Defuzzification Module along with the membership function value matrices received from the Fuzzification Module.

B.6 Defuzzification Module

The Defuzzification Module receives the matrix of adjustments and the membership function value matrices from the Rule Base Module. The final adjustment to the First Order Model confidence values as computed by the Context Adjuster is computed according to:

${\Delta \; {\alpha_{j}^{i}(k)}} = \frac{\sum\limits_{j = 1}^{N}\; {{\mu_{j}^{i}(k)}{\Delta\alpha}_{j}^{i}}}{\sum\limits_{j = 1}^{N}\; {\mu_{j}^{i}(k)}}$

such as, but not limited to, time of day, month of year, and base station coverage, there are a number of system start-up configuration parameters that can be adjusted in attempts to improve system performance. These adjustments are, in effect, adjustments computed depending on the previous performance values of each model under similar conditions as being currently considered. These adjustments are summed and forwarded to the blackboard. Thus, the Context Adjuster passes the following information to the blackboard: adjustments in confidence values for each of the First Order Models based on environmental factors and COA values associated with each location hypothesis.

SUMMARY

The Context Adjuster uses environmental factor information and past performance information for each of i First Order Models to compute adjustments to the current confidence values. It retrieves information from the First Order Models, interacts with the Supervisor and the Performance Database, and computes adjustments to the confidence values. Further, the Context Adjuster employs a genetic algorithm to improve the accuracy of its calculations. The algorithm for the Context Adjuster is included in algorithm BE.B below:

Algorithm BE.B: Pseudocode for the Context Adjuster. Context_Adjuster (geometries, alpha) /* This program implements the Context Adjuster. It receives from the First Order Models geometric areas contained in a data structure called geometries, and associated confidence values contained in an array called alpha. The program used environmental information to compute improved numerical values of the confidence values. It places the improved values in the array called alpha, destroying the previous values in the process. */ // pseudo code for the Context Adjuster // assume input from each of i models includes a // geographical area described by a number of points // and a confidence value alpha(i). alpha is such // that if it is 0.0 then the model is absolutely // sure that the MS is not in the prescribed area; // if it is 1.0 then the model is absolutely // sure that the MS is in the prescribed area. // calculate the center of area for each of the i model areas for i = 1 to number_of_models calculate center of area // termed coa(i) from here on out // extract information from the “outside world” or the environment find time_of_day find month_of_year find number_of_BS_available find number_of_BS_reporting // calculate percent_coverage of base stations percent_coverage = 100.0 * (number_of_BS_reporting / number_of_BS_available) // use these j = 4 environmental factors to compute adjustments to the i confidence values // associated with the i models - alpha(i) for i = 1 to number_of_models // loop on the number of models    for j = 1 to number_env_factors // loop on the number of environmental factors    for k = 1 to number_of_fuzzy_classes // loop on the number of classes       // used for each of the environmental       // factors    // calculate mu values based on membership function definitions    calculate mu(i,j,k) values    // go to the performance database and extract current performance information for each of the i     //models, in the k fuzzy classes, for the j environmental factors    fetch performance(i,j,k)    // calculate the actual values for the right hand sides of the fuzzy rules    delta_alpha(i,j,k) = performance(i,j,k) * delta_alpha_max(j)    // delta_alpha_max(j) is a maximum amount each environmental    // factor can alter the confidence value; it is eventually    // determined by a genetic algorithm    // compute a weighted average; this is traditional fuzzy mathematics    delta_alpha(i,j,k) = sum[mu(i,j,k) * delta_alpha(i,j,k) / sum[mu(i,j,k)]    end loop on k // number of fuzzy classes   // compute final delta_alpha values   delta_alpha(i) = sum[delta_alpha(i,j)]   end loop on j  // number of environmental factors  alpha(i) += delta_alpha(i)  end loop on i  // number of models // send alpha values to blackboard send delta_alpha(i) to blackboard // see if it is time to interact with a genetic algorithm if (in_progress)  then continue to calculate alpha adjustments else  call the genetic algorithm to adjust alpha_max parameters and mu functions

APPENDIX E Historical Data Confidence Adjuster Program Historical_data_confidence_adjuster(loc_hyp) /* This function adjusts the confidence of location hypothesis, “loc_hyp”, according to how well its location signature  cluster fits with verified location signature clusters in the location signature data base. */ {   mesh ← get_mesh_for(loc_hyp.FOM_ID); // each FOM has a mesh of the Location Center service area   covering ← get_mesh_covering_of_MS_estimate_for(loc_hyp); /* get the cells of “mesh” that minimally     cover the most pertinent target MS estimate in “loc_hyp”. */   total_per_unit_error ← 0; // initialization   for each cell, C, of “covering” do /* determine an error measurement between the location signature cluster        of “loc_hyp” and the verified location signature clusters in the cell */   {    centroid ← get_centroid(C);    error_obj ← DB_Loc_Sig_Error_Fit(centroid, C, loc_hyp.loc_sig_cluster, “USE ALL LOC         SIGS IN DB”);      /* The above function call computes an error object, “error_obj”, providing      a measure of how similar the location signature cluster for “loc_hyp” is with      the verified location signature clusters in the location signature data base,      wherein the verified location signature clusters are in the area represented by      the cell, C. See APPENDIX C for details of this function. */    total_per_unit_error ← total_per_unit_error + [error_obj.error * error_obj.confidence / sizeof(C)];      /* The above statement computes an “error per unit of cell area” term as:       [error_obj.error * error_obj.confidence / sizeof(C)], wherein the error is       the term: error_obj.error * error_obj.confidence. Subsequently, this error       per unit of cell area term accumulated in “total_relative_error” */   }   avg_per_unit_error ← total_per_unit_error / nbr_cells_in(mesh);    /* Now get a tunable constant, “tunable_constant”, that has been determined by the Adaptation    Engine 1382 (shown in Figs. 5, 6 and 8), wherein “tunable_constant” may have been adapted to    environmental characteristics. */   tunable_constant ← get_tuneable_constant_for(“Historical_Location_Reasoner”, loc_hyp);    /* Now decrement the confidence value of “loc_hyp” by an error amount that is scaled by    “tunable_constant” */   loc_hyp.confidence ← loc_hyp.confidence − [avg_per_unit_error * sizeof(covering) * tunable_constant];   RETURN(loc_hyp); }ENDOF Historical_data_confidence_adjuster 

1. A method for estimating, for each mobile station MS of a plurality of mobile stations, a location, L for MS using wireless signal measurements obtained from transmissions between the mobile station MS and a plurality of terrestrial communication stations, wherein each of said communications stations has one or more of each of a transmitter and a receiver for Tirelessly communicating with the mobile station MS, comprising: first receiving a request for locating the mobile station MS; second receiving, in response to said step of first receiving, one or more location hypotheses of the mobile station MS, wherein each location hypothesis includes a representation of a location estimate of the mobile station MS, and wherein said one or more location hypotheses are determined using one or more MS location related outputs from one or more of location information determiners, wherein (A1) (A2) following hold: (A1) for determining a corresponding portion of the location related outputs for the mobile station MS, each of said one or more location information determiners is dependent upon (I) and (II) following: (I) at least some of a plurality of data instances, wherein, for each of a plurality geographical locations, there is one of the data instances having, (i) and (ii) following: (i) a representation of the geographical location, and (ii) multipath information of wireless signal data obtained using transmissions between one of the mobile stations and the communication stations, wherein the one mobile station transmits from approximately the geographical location of (i); and (II) multipath data indicative of wireless signal multipath transmissions between the MS and the communication stations; (A2) for each representation of a location estimate from said location information determiners, there is a corresponding collection of wireless receivers of the communication stations from which multipath data indicative of wireless signal multipath transmissions between MS and the corresponding collection of receivers are used by the location information determiner for determining its location related outputs, wherein for at least a first and a second representation of location estimates, their corresponding collections are different; transmitting, to a predetermined destination, via a communications network, resulting information related to the location of the mobile station MS, wherein said resulting information is obtained from said one or more MS location estimates of said location hypotheses.
 2. The method of claim 1 further including one or more of: (a) modifying a confidence for at least one of the MS location estimates depending upon a consistency with previous location estimates along a known route; and (b) comparing data of the at least one MS location estimate with second data of one of the location estimates obtained from a location information determiner different from a location information determiner from which the at least one MS location information is received, wherein the data of the at least one MS location estimate, and the second data are each one of: a velocity and an acceleration; and modifying a confidence of the at least one MS location estimate depending upon a consistency between the data of the at least one MS location estimate and the second data. 